Accepted Manuscript Optimal production and carbon emission reduction level under cap-and-trade and low carbon subsidy policies
Kaiying Cao, Xiaoping Xu, Qiang Wu, Quanpeng Zhang PII:
S0959-6526(17)31708-0
DOI:
10.1016/j.jclepro.2017.07.251
Reference:
JCLP 10254
To appear in:
Journal of Cleaner Production
Received Date:
31 March 2016
Revised Date:
30 July 2017
Accepted Date:
31 July 2017
Please cite this article as: Kaiying Cao, Xiaoping Xu, Qiang Wu, Quanpeng Zhang, Optimal production and carbon emission reduction level under cap-and-trade and low carbon subsidy policies, Journal of Cleaner Production (2017), doi: 10.1016/j.jclepro.2017.07.251
This is a PDF file of an unedited manuscript that has been accepted for publication. As a service to our customers we are providing this early version of the manuscript. The manuscript will undergo copyediting, typesetting, and review of the resulting proof before it is published in its final form. Please note that during the production process errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain.
ACCEPTED MANUSCRIPT
1
Optimal production and carbon emission reduction level under cap-
2
and-trade and low carbon subsidy policies
3
Kaiying Caoa, Xiaoping Xub,*, Qiang Wuc, Quanpeng Zhangd a
4 5 6
999 Xuefu Road, Nanchang 330031, PR China b Management
7
Research Center, China Electronics Technology Group Corporation, No. 38
Research Institute, 199 Xiangzhang Avenue, Hefei, Anhui 230088, PR China c
8
School of Management, University of Science and Technology of China,
9 10
96 Jinzhai Road, Hefei, Anhui 230026, PR China d Capital
Operation Center, Beijing Tianheng Development Group CO., LTD, 31 Fuwai Street,
11 12
School of Management, Nanchang University,
Xicheng District, Beijing 100037, PR China *Corresponding
author ((+86)-551- 63607949;
[email protected])
13 14 15 16 17 18 19 20 21 22 23 1
ACCEPTED MANUSCRIPT 24
Optimal production and carbon emission reduction level under cap-
25
and-trade and low carbon subsidy policies
26
Abstract: In recent years, massive carbon emissions have caused serious global
27
environmental damage such as a worsening greenhouse effect and thick haze. To curb
28
carbon emissions as well as maintain sustainable economic development, governments
29
promote the development of low carbon economy by issuing multiple policies among
30
which the cap-and-trade policy (CTP) and low carbon subsidy policy (LCSP) are
31
widely adopted. Moreover, manufacturers are increasingly adopting carbon emission
32
reduction technology to produce greener products considering related government
33
policies and rising environmental awareness among consumers. To give policy-making
34
insights to governments as well as production and carbon emission reduction decision-
35
making insights to manufacturers, this paper investigates the impacts of CTP and LCSP
36
on the production and carbon emission reduction level of a manufacturer, and explores
37
which policy is better for society. The results show that the carbon emission reduction
38
level increases as the carbon trading price increases, whereas it is independent of the
39
unit low carbon subsidy. Interestingly, the carbon trading price does not always have a
40
negative effect on the manufacturer’s profit, and the cap does not always produce a
41
positive effect on the manufacturer’s profit. More importantly, we find that LCSP is
42
more beneficial to society when the environmental damage coefficient is less than a
43
threshold, but otherwise CTP is more beneficial.
44
Keywords: cap-and-trade policy; low carbon subsidy policy; carbon emission
45
reduction level; social welfare 2
ACCEPTED MANUSCRIPT
46
1. Introduction
47
Rapid economic development brings huge amounts of carbon emissions, which is the
48
main reason for global warming. To curb carbon emissions, the cap-and-trade policy
49
(CTP) has been recommended by many senior scholars such as Hua et al. (2011) and
50
Du et al. (2016) and implemented in many parts of the world. Under CTP, the
51
manufacturing firms are firstly allocated some free emission credits from the
52
government and they can trade (i.e., buy or sell) the emission credits with each other in
53
the carbon trading market. The European Union Emissions Trading Scheme is the world
54
largest carbon trading market, covering almost 50% of the total carbon emissions in
55
European Union (Hintermann, 2010). Meanwhile, in order to promote the development
56
of low carbon economy, the government also tries some creative stimulus solutions,
57
such as the low carbon subsidy policy (LCSP). That is, the government adopts a policy
58
that motivates manufacturers through giving incentives to produce green products. The
59
United States, for example, has provided $2.4 billion of loans for electric vehicle
60
corporations and $2 billion for 30 factories producing batteries and other new energy
61
vehicles (Gong et al., 2013). Hence, both CTP and LCSP can significantly affect the
62
manufacturer’s production decisions and improve environmental standards.
63
Under CTP, the carbon emission credits are essential resources for the
64
manufacturer’s annual production. Under LCSP, the manufacturers can obtain more
65
subsidies by improving the carbon emission reduction level. Hence, both CTP and
66
LCSP can stimulate the manufacturer to produce cleaner products by adopting green
67
technologies. In addition, the consumers are increasingly motivated and encouraged to 3
ACCEPTED MANUSCRIPT 68
buy green products such as the energy-saving equipment. A purchasing survey related
69
to household electronic and electrical equipment in Ningbo (Zhejiang province, China),
70
revealed that 70% to 80% of the locals prefer to buy environmental friendly products
71
(Huang et al., 2006). After implementing the green production technologies, the
72
manufacturers need to figure out optimized production and the related carbon emission
73
reduction level under CTP and LCSP. Meanwhile, the local government should decide
74
which policy should be implemented to maximize the social welfare.
75
Despite the importance of the policy choice between CTP and LCSP to the
76
government as well as the production and reduction strategies under the two policies to
77
manufacturers, there is no previous work to investigate the above challenges of
78
manufacturers and governments. To fill this gap, this paper meets those challenges.
79
This paper considers a manufacturer producing and then selling green products directly
80
under CTP and LCSP. We explore and analyze the optimal production strategy and the
81
carbon emission reduction level decisions for the manufacturer under CTP and LCSP.
82
The government optimal decisions for the cap and unit low carbon subsidy under the
83
two policies will also be examined. In addition, we compare the optimal social welfare
84
results for the two policies and propose some managerial insights.
85
The paper is organized as follows. Section 2 reviews the related literature. In Section
86
3, the key problems and scientific issues are described in detail. The results under the
87
two policies are shown in Section 4. The optimal cap and unit low carbon subsidy are
88
presented in Section 5. Section 6 compares the social welfare under the two policies.
89
The last section concludes the paper, and the future research directions are also 4
ACCEPTED MANUSCRIPT 90
proposed. All the proofs in this paper are shown in the Appendix section.
91
2. Literature review
92
An abundance of investigations concerning the cap-and-trade and low carbon
93
subsidy policies, in different aspects, can be found in the open literature resources. The
94
ones which are highly related to this work can be divided into three categories: (1) a
95
firm’s optimal operational decisions under CTP; (2) a firm’s optimal operational
96
decisions under LCSP; (3) comparison of a firm’s operational decisions under the
97
different environmental policies.
98
2.1. A firm’s operational decisions under CTP
99
Dobos (2005) studies the optimal production-inventory strategies for a company
100
under the cap-and-trade policy regulation, and finds that the optimal production
101
quantities are reduced after applying the emission trading policy. Benjaafar et al. (2013)
102
analyzes the optimal production decisions covering multiple periods under carbon tax,
103
cap-and-trade policy, and carbon offsets, and the results show that the cap allocated by
104
government has no effect on the firm’s optimal decisions. To extend the study of
105
Benjaafar et al. (2013) by allowing different emissions trading prices, Gong and Zhou
106
(2013) establish the structural properties of the optimal cost functions and find that the
107
allocated cap influences the firm’s production decisions. To take into account an
108
emission-dependent supply chain, Du et al. (2013) analyze the impact of cap-and-trade
109
policy on such a chain and find the allocated cap has a significant effect on the optimal
110
production decisions for the supply chain. Xu et al. (2017a) investigate the problems of 5
ACCEPTED MANUSCRIPT 111
production and pricing with two substitutable and complementary products in a Make-
112
To-Order supply chain under cap-and-trade policy, and the results show that the cap-
113
and-trade regulation may not induce the manufacturers to produce cleaner products. In
114
follow-up work, Xu et al. (2017b) study the production and carbon emission reduction
115
level in a Make-To-Order supply chain under cap-and-trade regulation, and find that
116
both wholesale price and cost sharing contracts can coordinate the supply chain.
117
The above literature, with the exception of Xu et al. (2017b), does not consider the
118
effect of the carbon emission reduction level, which plays a key role in the firm’s
119
operational decisions. Moreover, unlike previous works, our work focuses on
120
comparison of the CTP and LCSP, and takes social welfare into account. Since it is
121
necessary for the government to choose among the different environmental policies, we
122
apply a Stackelberg game to compare the social welfare benefits under CTP and LCSP,
123
and present some managerial insights based on the results.
124
2.2. A firm’s operational decision under LCSP
125
Considerable attention has been devoted to investigating the effect of subsidy policy
126
on green technology or new energy, as exemplified by Lin and Jiang (2011) and Cohen
127
et al. (2015). Here we focus on the literature of the operational decisions under subsidy
128
policy. Moraga-González and Viaene (2005) explore the pricing decisions of two
129
competitive firms under subsidy policy. The results show that the government can
130
improve the social welfare by subsidizing domestic low-quality production. In order to
131
extend the reference of the newsvendor model, Zhang (2014) investigates the optimal 6
ACCEPTED MANUSCRIPT 132
production decisions with a governmental subsidy policy, and determines that the
133
subsidies are significant factors affecting the optimal production quantity. By
134
combining system dynamics with real option models, Jeon et al. (2015) optimize
135
financial subsidies and investments for renewable energy technologies, and find that
136
their model can help governments to optimize their subsidy allocation.
137
Similar to the situation described in subsection 2.1, no paper considers the carbon
138
emission reduction level under LCSP. Moreover, the social welfare functions in
139
previous research have not considered the negative influence of carbon emission on the
140
social welfare. Since carbon emissions can influence the social welfare, it is necessary
141
to consider their negative effect in the social welfare function. In our work, we consider
142
the firm’s production and carbon emission reduction level decisions under CTP and
143
LCSP, and compare the social welfare benefits under the two policies, which makes the
144
problem much more complex.
145
2.3. Comparison of a firm’s operational decisions under different environmental
146
policies
147
Many published papers compare different environmental policies considering
148
various aspects such as the total carbon emissions, social welfare, and so on. The studies
149
mainly focus on (i) the comparison of carbon tax policy and subsidy policy; (ii) the
150
comparison of cap-and-trade and carbon tax policies.
151
By modelling household relocation choice behaviors and consumption behaviors,
152
Yin et al. (2016) study the effect of three environmental policies on energy 7
ACCEPTED MANUSCRIPT 153
consumption. They find that the combination of subsidy and tax policies can move 2.2%
154
of households to the city center area. Zhao et al. (2015) study the effect of carbon tax
155
and government subsidy on the efficiency improvement, and find that the two policies
156
have a positive impact on the efficiency improvement. By considering environmentally
157
aware consumers, Bansal and Gangopadhyay (2003) investigate the optimal pricing
158
decisions under the uniform policy and discriminative policy. They find that the
159
discriminative subsidy policy can increase the social welfare and the discriminative tax
160
policy can reduce social welfare. When considering variable cleanup cost, Bansal
161
(2008) studies the optimal pricing decisions under carbon tax and low carbon subsidy
162
policies. He discovers that the optimal policy depends on the value of the environmental
163
damage coefficient. Galinato and Yoder (2010) investigate the optimal revenue under
164
carbon tax and subsidy policies, and find that both types can enhance social welfare.
165
Lim and Kim (2012) introduce Research and Development into the CGE (Computable
166
General Equilibrium) model to simulate the technology progress. They find that the
167
combination of the subsidy policy and carbon tax policy can increase GDP without
168
increasing carbon emissions.
169
Some papers compare carbon tax and cap-and-trade regulations based on macro
170
analysis, such as literature survey and opinion pieces analysis (Harrison and Smith,
171
2009), advantage and disadvantage analysis (Avi-Yonah and Uhlmann, 2009),
172
empirical data analysis (Carl and Fedor, 2016). Meanwhile, there are also some studies
173
which compare carbon tax and cap-and-trade policies in a micro aspect. Wittneben
174
(2009) compares six aspects of cap-and-trade and carbon tax regulations, and finds that 8
ACCEPTED MANUSCRIPT 175
carbon tax regulation is a quicker and cheaper way to control carbon emissions. Based
176
on the traditional Economic Order Quantity (EOQ) model, He et al. (2015) study the
177
optimal lot-sizing problem under cap-and-trade and carbon tax policies and compare
178
the total carbon emissions under the two policies. Zhang and Xu (2013) investigate the
179
optimal production decision considering multiple products under cap-and-trade and
180
carbon tax policies. In that work, they find that there is no policy always having an
181
advantage in curbing carbon emissions. Xu et al. (2015) explore the optimal production
182
and pricing decisions under cap-and-trade and carbon tax policies, and they find that
183
social welfare under carbon tax policy is no less than that under cap-and-trade policy.
184
Li et al. (2017) investigate production and transportation outsourcing strategies in two
185
cases: one under cap-and-trade policy and the other under joint cap-and-trade and tax
186
policy, and find that joint policy is better than single policy to curb carbon emissions.
187
The differences between our paper and previous works are presented as follows. Our
188
paper is among the first papers to investigate the impacts of CTP and LCSP on
189
production and reduction strategies of firms who produce and sell products directly.
190
Moreover, we explore the optimal decisions of the government under CTP and LCSP,
191
respectively, and compare the social welfare consequences under CTP and LCSP to
192
present the optimal policy. In practice, our results serve for firms to determine optimal
193
production and reduction strategies under CTP and LCSP as well as providing insights
194
for the government to issue optimal policy.
195
3. Model formulation and notation
9
ACCEPTED MANUSCRIPT 196
We consider a single manufacturer selling green products directly. To promote the
197
development of low carbon economy, the government has two policies: one is cap-and-
198
trade policy (CTP) and the other is low carbon subsidy policy (LCSP). Under CTP, the
199
government allocates a cap (i.e., limited number of carbon emission permits) to the
200
manufacturer, and the manufacturer can trade (i.e., buy or sell) emission credits in the
201
carbon trading market according to its own situation. Under LCSP, the government
202
subsidizes the manufacturer by a specified amount per unit green product sold.
203
To clarify our model, notation is defined in Table 1.
204
Table 1
205
The major parameters and notations
206
Notation
Description
a
Initial market potential (unit/year)
p
Product price ($/unit)
e
Carbon emission reduction level (kg CO2e/unit)
k
Product price sensitivity coefficient (unit2/$/year)
m
Consumers’ sensitivity to carbon emission reduction level (unit2/kg CO2e/year)
e0
Initial unit carbon emissions (kg CO2e/unit)
h
Cost coefficient of carbon emission reduction ($ unit/kg CO2e2)
c1
Unit production cost ($/unit)
q
Production quantity ($/year)
E
Total emission, which is equal to (e0 e) q (kg CO2e/unit)
b
Carbon trading price ($/kg CO2e/unit)
C
Emission cap (kg CO2e/unit)
Unit low carbon subsidy ($/unit)
v
Environmental damage coefficient ($/kg CO2e/unit)
M
Profit of the manufacturer ($/year)
3.1. The demand function
10
ACCEPTED MANUSCRIPT 207
Following the example of earlier scholars (e.g. Luo et al., 2016), we assume that the
208
demand for green products is sensitive to the carbon emission reduction level. Thus,
209
the demand function faced by the manufacturer can be given as the following:
210
D a kp me .
⑴
211
In Eq. (1), e is the carbon emission reduction level, k is the product price sensitivity
212
coefficient and the parameter m reflects the consumers’ sensitivity to carbon emission
213
reduction level (Wang et al., 2016).
214
215
Note that, we assume that the production quantity q is equal to the product demand.
3.2.The cost structure
216
The unit production cost is denoted by the parameter c1 . Following Luo et al. (2016),
217
we assume that the carbon emission reduction cost is he 2 , which also represents carbon
218
reduction investment. Note that the parameter h represents the cost coefficient of
219
carbon emission reduction.
220
As in Cachon (2014), the environmental damage cost is assumed to be increasing in
221
total emission and is expressed as vE , where v is the environmental damage coefficient
222
which translates a unit carbon emission into a monetary unit. Moreover, we assume that
223
v 0 , which means that carbon emission makes the society worse off.
224
3.3.Two policies
225
This paper investigates optimal production and carbon emission reduction level
226
decisions under CTP and LCSP, and explores the impacts of these two policies (i.e.,
227
CTP and LCSP) on the manufacturer’s optimal decisions. Moreover, the study 11
ACCEPTED MANUSCRIPT 228
determines which policy is optimal for the government by comparing social welfare
229
under these two policies.
230
Under CTP, the government allocates an emission cap C to the manufacturer. The
231
manufacturer curbs its total emission E (e0 e)q by improving the carbon emission
232
reduction level e . If E is larger (less) than the cap C , the manufacturer will buy (sell)
233
emission credits from (into) the carbon trading market with a unit carbon trading price
234
b . Moreover, we assume that e0 q C , that is, the cap is lower than the manufacturer’s
235
initial total carbon emissions (Du et al., 2013). The assumption is reasonable since the
236
manufacturer would not be induced to curb carbon emission unless the cap is less than
237
the initial carbon emissions, thus the government sets a low cap to stimulate the
238
manufacturer to reduce carbon emissions.
239 240 241
Under LCSP, the government subsidizes that manufacturer per unit product sold and the unit low carbon subsidy is represented by the parameter . Note that, in our model we use superscripts C and S to represent CTP and LCSP
242
respectively.
243
3.4.The game
244
There is a Stackelberg game in our model. The government is the leader and the
245
manufacturer is the follower. The government is committed to maximizing social
246
welfare and the manufacturer pursues maximal profit. Note that we use backward
247
induction to solve the model.
248
4. The main results under CTP and LCSP 12
ACCEPTED MANUSCRIPT 249
The section is divided into two subsections, one is the optimal operational decisions
250
under CTP and other one is the optimal operational decisions under LCSP. Under each
251
policy, the manufacturer determines carbon emission reduction level and product price.
252
4.1. The optimal operational decisions under CTP
253 254 255 256 257
Based on Eq. ⑴, the manufacturer’s profit under CTP is given as following:
max CM ( p, e) D( p c1 he 2 ) b[(e0 e) D C ] .
⑵
( p ,e )
On the right side of the equation, the first term is the sales profit of the manufacturer, and the second term is the carbon trading cost or revenue. The optimal decisions and profits under CTP are shown in Theorem 1.
258
Theorem 1. Under CTP, the optimal product price, carbon emission reduction level,
259
production quantity, and profit are given as follows:
260
(a) When 0 C C ,
261
p C [3m 2 4hk (kc1 kbe0 a ) kb(2m kb)] (8hk 2 ) , eC (m kb) (2kh) ,
262
q C [m 2 4hk (kc1 kbe0 a ) kb(2m kb)] (8hk ) ,
263
CM bC [m 2 4hk (kc1 kbe0 a ) kb(2m kb)]2 (64h 2 k 3 ) ;
264
(b) when C C ,
265
p C (ae0 C ) (ke0 ) (m 2 bkm) (2hk 2 ) , eC (m kb) (2kh) , q C C e0 ,
266
CM C[m 2 e0 4hk (kc1e0 C ae0 ) kb(2me0 bke0 )] (4hk 2 e0 2 ) ,
267
where C e0 [m 2 4hk (kc1 kbe0 a ) kb(2m kb)] (8hk ) .
268
Theorem 1 shows that the emission trading decisions of the manufacturer depend on
269
the size of the cap. When the allocated cap is less than a threshold, the manufacturer 13
ACCEPTED MANUSCRIPT 270
buys emission credits from the carbon trading market and the purchasing amount is
271
equal to the difference between the total emissions and the cap. When the allocated cap
272
is larger than the threshold, the manufacturer sells surplus emission credits to the carbon
273
trading market, and the sale amount is equal to the difference between the cap and the
274
total emissions. When the allocated cap is equal to the threshold, the manufacturer
275
neither buys nor sells emission credits.
276
Theorem 1 also shows that the optimal production quantity firstly remains constant
277
and then increases as the cap increases. The result is rather intuitive. The optimal
278
production quantity remains constant as the cap increases, because the manufacturer
279
determines the optimal production quantity without considering the cap when the cap
280
is less than a threshold. The optimal production quantity increases as the cap increases,
281
because the manufacturer determines the optimal production quantity at the point of a
282
certain restrictive condition when the cap is larger than the threshold. Please note that
283
the threshold is equal to C and the point of the restrictive condition is C e0 .
284
Theorem 1 indicates that the optimal carbon emission reduction level and the product
285
price increase as the carbon trading price increases. This pattern occurs due to the
286
manufacturer’s motivation in improving the carbon emission reduction level and
287
reducing the total carbon emissions. The manufacturer also should raise the product
288
price to deal with the increase of carbon emission reduction cost.
289
Proposition 1.
290
(1) The impact of the cap on the manufacturer’s optimal profit is as follows:
291
(a) When 0 C C , CM is increasing in C ; 14
ACCEPTED MANUSCRIPT 292 293 294
(b) when C C , CM is decreasing in C ,
where C e0 [m 2 4hk (kc1 a ) kb(2m kb)] (8hk ) . (2) The impact of the carbon trading price on the manufacturer’s optimal profit is as
295
follows:
296
(a) When 0 C C , CM is decreasing in b ;
297
(b) when C C , CM is increasing in b ,
298
where C [e0 (m kb) (2hk )][m 2 4hk (kc1 kbe0 a ) kb(2m kb)] (8hk ) .
299
Proposition 1(1) shows that the manufacturer’s profit firstly increases and then
300
decreases as the cap increases. When the cap is less than a threshold, as the cap
301
increases, the manufacturer makes no changes and although its sales profit remains
302
constant, the manufacturer’s profit increases due to the increase of carbon trading
303
revenue. When the cap is larger than the threshold, as the cap increases, the
304
manufacturer’s profit decreases due to the decrease of product price.
305
Proposition 1(2) shows that the manufacturer’s profit firstly decreases and then
306
increases as the carbon trading price increases. When the cap is less than the
307
manufacturer’s emissions, it must buy emissions credits from the carbon trading
308
market, thus the manufacturer’s profit decreases as the carbon trading price increases.
309
When the cap is larger than the manufacturer’s emissions, it can earn some carbon
310
trading revenue by selling surplus emissions credits, thus the manufacturer’s profit
311
increases as the carbon trading price increases.
312
4.2. The optimal operational decisions under LCSP
15
ACCEPTED MANUSCRIPT 313
Based on Eq. ⑴, the objective function of the manufacturer under LCSP is given as
314
follows:
315
max SM ( p, e) D( p c1 he 2 ) .
316 317
⑶
( p ,e )
Theorem 2. Under LCSP, the optimal retail price, carbon emission reduction level, production quantity, and profit are given as follows:
318
p S [3m 2 4hk (kc1 a k )] (8hk 2 ) , e S m (2kh) ,
319
q S [m 2 4hk (kc1 k a )] (8hk ) , SM [m 2 4hk (k a kc1 )]2 (64h 2 k 3 ) .
320
Theorem 2 states that the optimal carbon emission reduction level increases as the
321
consumers’ sensitivity to carbon emission reduction level increases. The link occurs
322
because the manufacturer should improve the carbon emission reduction level to
323
stimulate more consumers to purchase products, a conclusion which is similar to Liu et
324
al. (2012).
325
Theorem 2 also says that the optimal product price increases as the consumers’
326
sensitivity to carbon emission reduction level increases. The optimal carbon emission
327
reduction level increases as the consumers’ sensitivity to carbon emission reduction
328
level increases, thus the manufacturer should raise the product price due to the increase
329
of carbon emission reduction cost.
330 331 332 333 334
Theorem 2 shows that as the low carbon subsidy increases, the optimal product price decreases and the optimal production quantity increases. This result is rather intuitive. It also implies that LCSP can motivate the manufacturer to produce more green products. Theorem 2 indicates that the manufacturer’s profit increases as the consumers’ 16
ACCEPTED MANUSCRIPT 335
sensitivity to carbon emission reduction level increases. Therefore, the manufacturer
336
has the motivation to improve the consumers’ sensitivity to carbon emission reduction
337
level.
338
5. The government decisions
339
As the leader, the government takes the manufacturer’s reaction functions into
340
account. Therefore, the government determines the cap under CTP and decides the unit
341
low carbon subsidy under LCSP.
342
5.1. The optimal decisions of the government under CTP
343
The government determines the cap to maximize social welfare after considering the
344
manufacturer’s reaction functions. We define MS as the manufacturer’s sales profit,
345
i.e., MS =(a kp me)( p c1 he 2 ) . Similar to Yenipazarli (2016), the social welfare
346
is defined as the sum of the manufacturer’s sales profit and the consumer surplus less
347
the environmental damage cost. Thus, the social welfare function is the following:
348
max SW (C ) C
(C )
qC
0
( p p C )d q CMS v(e0 eC )q C .
⑷
349
On the right side of the equation, the first two terms are the consumer surplus and
350
the manufacturer’s optimal sales profit, respectively, and the last term is the
351
environmental damage cost which is calculated by multiplying the environmental
352
damage coefficient by the carbon emissions.
353
Theorem 3. The optimal cap and social welfare are
354
C e0 [m 2 k 2b 2 2kv(m bk ) 4hk (kc1 a kve0 )] (4hk ) , 17
ACCEPTED MANUSCRIPT
355
SW C [m 2 k 2b 2 4hk (kc1 kve0 a ) 2kv(m kb)]2 (32k 3 h 2 ) .
356
Theorem 3 shows that the optimal cap and social welfare firstly increase and then
357
decrease as the carbon trading price increases. From Theorem 1, we can see that the
358
optimal carbon emission reduction level increases as the carbon trading price increases,
359
then the unit carbon emission reduction cost increases and the unit environmental
360
damage decreases. When the carbon trading price is less than a threshold, as it increases,
361
the increase of the social welfare from the decreased environmental damage cost is
362
larger than the decrease of the social welfare from the increased carbon emission
363
reduction cost, thus the government should improve the cap to stimulate the
364
manufacturer to produce more products. When the carbon trading price is larger than
365
the threshold, as it increases, the increase of the social welfare from the decreased
366
environmental damage cost is less than the decrease of the social welfare from the
367
increased carbon emission reduction cost, thus the government should decrease the cap
368
to curb carbon emissions.
369
5.2. The optimal decisions of the government under LCSP
370
Using the analysis in this section, the government can determine a unit low carbon
371
subsidy to maximize social welfare after considering the manufacturer’s reaction
372
functions. The social welfare function is the following:
373
max SW ( )
374 375
S
( )
qS
0
( p p S )d q SM q S v(e0 e S )q S .
On the right side of the equation, the first term
qS
0
⑸
( p p S )d q is the consumer
surplus, the second term SM is the manufacturer’s profit, the third term q S is the 18
ACCEPTED MANUSCRIPT
376
government expenditure, and the last term v(e0 e S )q S is the environmental damage
377
cost.
378
Theorem 4: The optimal unit low carbon subsidy and social welfare are
379
[m 2 4kmv 4hk (kc1 a 2kve0 )] (4hk 2 ) ,
380
SW S [m 2 2kmv 4hk (kc1 kve0 a )]2 (32k 3 h 2 ) .
381
Theorem 4 implies that the optimal unit low carbon subsidy decreases as the initial
382
unit carbon emissions increases. This phenomenon makes sense because if the product
383
has higher initial unit carbon emissions, the government should reduce the unit low
384
carbon subsidy to stimulate the manufacturer to decrease the production quantity.
385
Theorem 4 also implies that the optimal unit low carbon subsidy decreases as the
386
environmental damage coefficient increases. This happens because the government
387
reduces the unit low carbon subsidy to demotivate the manufacturer to produce
388
products, and thus control the total emissions.
389
Theorem 4 indicates that both the optimal unit low carbon subsidy and social welfare
390
increase as the consumers’ sensitivity to carbon emission reduction level increases. It
391
is known that consumers’ willingness-to-pay increases as the consumers’ sensitivity to
392
carbon emission reduction level increases. The government should improve the unit
393
low carbon subsidy to motivate the manufacturer to produce more products with less
394
unit carbon emissions, which can obviously increase the social welfare. Therefore,
395
government has the motivation to improve the consumers’ sensitivity to carbon
396
emission reduction level.
397
6. The optimal policy 19
ACCEPTED MANUSCRIPT 398
In this section, we compare the social welfare benefits under CTP and LCSP, and the
399
optimal policy is presented.
400
Theorem 5. The size relationship between two social welfare benefits is as follows:
401
(a) When b 2 v , SW C SW S ;
402
(b) when b 2 v , SW C SW S .
403
Theorem 5 (a) says that the social welfare under CTP is better than that under LCSP
404
when the environmental damage coefficient is larger than a threshold. From Theorem
405
1 and Theorem 2, it is easy to find that the total emissions under CTP is lower than that
406
under LCSP. Therefore, the government should choose CTP to control the total
407
emissions when the environmental damage coefficient is larger than the threshold.
408
Theorem 5 (b) says that the social welfare under CTP is lower than that under LCSP
409
when the environmental damage coefficient is less than the threshold. From Theorem
410
1 and Theorem 2, it is easy to find that the production quantity under LCSP is larger
411
than that under CTP. Therefore, the government should choose LCSP to stimulate the
412
manufacturer to produce more products when the environmental damage coefficient is
413
less than the threshold.
414
To illustrate Theorem 5 intuitively, we consider the following numerical example.
415
We set a 10 unit/year, b 1 $/kg CO2e/unit, k 1 unit2/$/year, c1 3 $/unit, h 1 $
416
unit/kg CO2e2, e0 1 kg CO2e/unit, m 0.5 unit2/kg CO2e/year, and the value of v is allowed
417
to vary between 0 and 1. Then, the social welfare under two policies with respect to v
418
is depicted in Fig. 1.
20
ACCEPTED MANUSCRIPT
419 Fig. 1. The social welfare with respect to v
420 421
Fig.1 shows that the social welfare under either policy decreases as the environmental
422
damage coefficient increases. Fig.1 also exhibits that the two policies’ social welfare is
423
equal at the point v 0.5 . If the environmental damage coefficient is less than that
424
point, the social welfare under CTP is better than that under LCSP; otherwise, the social
425
welfare under CTP is worse than that under LCSP.
426
Theorem 5 implies that LCSP is the optimal policy for the government when the
427
environmental damage coefficient is less than a threshold; otherwise, CTP is the
428
optimal policy for the government. Hence, there is no single policy that always yields
429
the best social welfare.
430
7. Conclusion
431
Environmental pollution caused by carbon emissions (e.g., greenhouse effect) has
432
attracted the attention of all parts of society including governments, firms, and
433
consumers. To promote low carbon economy, governments in many countries are 21
ACCEPTED MANUSCRIPT 434
widely adopting CTP and LCSP. As of July 2015, there are 17 emissions trading
435
systems in force across four continents, covering 35 countries (ICAP report, 2015).
436
Moreover, the US government in 2009 granted a subsidy (tax credit) for consumers
437
who purchased electronic vehicles (Cohen et al., 2015), and the Chinese government
438
implemented a new energy vehicles subsidy in 2010. Though one is a tax policy and
439
the other is subsidy policy, both CTP and LCSP make society better off. To explore
440
which policy is more conducive to society as well as investigate the impact of these two
441
policies on the production and carbon emission reduction level of manufacturers, we
442
consider a manufacturer producing green products and selling them directly.
443
Theoretical models are developed to examine optimal strategies of the manufacturer
444
and the government. Some important managerial insights are concluded as follows.
445
The optimal policy: The government should issue CTP when the environmental
446
damage coefficient is larger than a certain threshold; otherwise, the government should
447
issue LCSP.
448
The optimal cap and unit low carbon subsidy: As the carbon trading price
449
increases, the government should improve the optimal cap when the carbon trading
450
price is relative small; otherwise, the government should reduce the optimal cap. As the
451
initial unit carbon emissions or the environmental damage coefficient increases, the
452
government should reduce the optimal unit low carbon subsidy, whereas the
453
government should improve the optimal subsidy as the consumers’ sensitivity to carbon
454
emission reduction level increases.
455
The optimal production and carbon emission reduction level: As the cap 22
ACCEPTED MANUSCRIPT 456
increases, the manufacturer should improve the carbon emission reduction level, but
457
should keep its production unchanged when the cap is relative small and should increase
458
its production otherwise. As the unit carbon subsidy increases, the manufacturer should
459
improve its production but should keep the optimal carbon emission reduction level
460
unchanged.
461
The manufacturer’s optimal profit: Interestingly, the results show that the cap may
462
make the manufacturer worse off, whereas the carbon trading price may make the
463
manufacturer better off. Moreover, the unit low carbon subsidy always makes the
464
manufacturer better off.
465
There is still much space for future research. Firstly, we assume that the manufacturer
466
produces products and sells them into the market directly. Thus the situation in which
467
the manufacturer sells products through an independent retailer could be considered in
468
future research. Secondly, our paper just studies one product but multi-products can
469
also be also considered. Finally, it would be interesting and valuable to explore the
470
situation in which there are two or more competing manufacturers under the two
471
policies.
472
473
References
474
Avi-Yonah, R. S., Uhlmann, D. M., 2009. Combating global climate change: Why a
475
carbon tax is a better response to global warming than cap and trade. Stanf. Environ.
476
Law J. 28, 3-50. 23
ACCEPTED MANUSCRIPT 477 478 479 480
Bansal, S., Gangopadhyay, S., 2003. Tax/subsidy policies in the presence of environmentally aware consumers. J. Environ. Econ. Manag. 45(2), 333-355. Bansal, S., 2008. Choice and design of regulatory instruments in the presence of green consumers. Resour. Energy. Econ. 30(3), 345-368.
481
Benjaafar, S., Li, Y., Daskin, M., 2013. Carbon footprint and the management of supply
482
chains: Insights from simple models. IEEE. T. Autom. Sci. Eng. 10(1), 99-116.
483
Cachon, G. P., 2014. Retail store density and the cost of greenhouse gas emissions.
484 485 486
Manage. Sci. 60(8), 1907-1925. Carl, J., Fedor, D., 2016. Tracking global carbon revenues: A survey of carbon taxes versus cap-and-trade in the real world. Energy Policy 96, 50-77.
487
Cohen, M. C., Lobel, R., Perakis, G., 2015. The impact of demand uncertainty on
488
consumer subsidies for green technology adoption. Manage. Sci. 62(5), 1235-1258.
489
Dobos, I., 2005. The effects of emission trading on production and inventories in the
490 491 492
Arrow–Karlin model. Int. J. Prod. Econ. 93, 301-308. Du, S., Tang, W., Song, M., 2016. Low-carbon production with low-carbon premium in cap-and-trade regulation. J. Clean. Prod. 134, 652-662.
493
Du, S., Zhu, L., Liang, L., Ma, F., 2013. Emission-dependent supply chain and
494
environment-policy-making in the ‘cap-and-trade’ system. Energy Policy 57, 61-
495
67.
496 497 498
Gong, X., Zhou, S. X., 2013. Optimal production planning with emissions trading. Oper. Res. 61(4), 908-924. Galinato, G. I., Yoder, J. K., 2010. An integrated tax-subsidy policy for carbon emission 24
ACCEPTED MANUSCRIPT 499 500 501 502 503
reduction. Resour. Energy. Econ. 32(3), 310-326. Gong, H., Wang, M. Q., Wang, H., 2013. New energy vehicles in China: policies, demonstration, and progress. Mitig. Adapt. Strat. Gl. 18(2), 207-228. Harrison, T., Smith, G., 2009. Cap and Trade versus a Carbon Tax. Working paper, Citizens Action Coalition of Indiana, Indianapolis, IN 46204.
504
He, P., Zhang, W., Xu, X., Bian, Y., 2015. Production lot-sizing and carbon emissions
505
under cap-and-trade and carbon tax regulations. J. Clean. Prod. 103, 241-248.
506
Hintermann, B., 2010. Allowance price drivers in the first phase of the EU ETS. J.
507 508 509
Environ. Econ. Manag. 59(1), 43-56. Hua, G., Cheng, T. C. E., Wang, S., 2011. Managing carbon footprints in inventory management. Int. J. Prod. Econ. 132(2), 178-185.
510
Huang, P., Zhang, X., Deng, X., 2006. Survey and analysis of public environmental
511
awareness and performance in Ningbo, China: a case study on household electrical
512
and electronic equipment. J. Clean. Prod. 14(18), 1635-1643.
513
ICAP
report
2015.
Emission
trading
worldwide.
At:
514
https://icapcarbonaction.com/images/StatusReport2015/ICAP_Report_2015_02_1
515
0_online_version.pdf (accessed July 30, 2017).
516
Jeon, C., Lee, J., Shin, J., 2015. Optimal subsidy estimation method using system
517
dynamics and the real option model: Photovoltaic technology case. Appl.
518
Energy 142, 33-43.
519
Li, J., Su, Q., Ma, L., 2017. Production and transportation outsourcing decisions in the
520
supply chain under single and multiple carbon policies. J. Clean. Prod. 141, 110925
ACCEPTED MANUSCRIPT 521 522 523 524 525 526 527 528 529 530 531 532 533 534 535 536 537
1122. Lim, J. S., Kim, Y. G., 2012. Combining carbon tax and R&D subsidy for climate change mitigation. Energ. Econ. 34, S496-S502. Lin, B., Jiang, Z., 2011. Estimates of energy subsidies in China and impact of energy subsidy reform. Energ. Econ. 33(2), 273-283. Liu, Z. L., Anderson, T. D., Cruz, J. M., 2012. Consumer environmental awareness and competition in two-stage supply chains. Eur. J. Oper. Res. 218(3), 602-613. Luo, Z., Chen, X., Wang, X., 2016. The role of co-opetition in low carbon manufacturing. Eur. J. Oper. Res. 253(2), 392-403. Moraga-González, J. L., Viaene, J. M., 2005. Trade policy and quality leadership in transition economies. Eur. Econ. Rev. 49(2), 359-385. Wang, Q., Zhao, D., He, L., 2016. Contracting emission reduction for supply chains considering market low-carbon preference. J. Clean. Prod. 120, 72-84. Wittneben, B. B., 2009. Exxon is right: Let us re-examine our choice for a cap-andtrade system over a carbon tax. Energy Policy 37(6), 2462-2464. Xu, X., He, P., Xu, H., Zhang, P., 2017b. Supply chain coordination with green technology under cap-and-trade regulation. Int. J. Prod. Econ. 183, 433-442.
538
Xu, X., Xu, X., He, P., 2015. Joint production and pricing decisions for multiple
539
products with cap-and-trade and carbon tax regulations. J. Clean. Prod. 112, 4093-
540
4106.
541
Xu, X., Zhang, W., He, P., Xu, X., 2017a. Production and pricing problems in make-
542
to-order supply chain with cap-and-trade regulation. Omega-Int. J. Manage. S. 66, 26
ACCEPTED MANUSCRIPT 248-257.
543 544
Yenipazarli, A., 2016. Managing new and remanufactured products to mitigate
545
environmental damage under emissions regulation. Eur. J. Oper. Res. 249(1), 117-
546
130.
547
Yin, Y., Aikawa, K., Mizokami, S., 2016. Effect of housing relocation subsidy policy
548
on energy consumption: A simulation case study. Appl. Energy 168, 291-302.
549
Zhang, B., Xu, L., 2013. Multi-item production planning with carbon cap and trade mechanism. Int. J. Prod. Econ. 144(1), 118-127.
550 551
Zhang, X., 2014. Reference-dependent electric vehicle production strategy considering subsidies and consumer trade-offs. Energy Policy 67, 422-430.
552 553
Zhao, X., Yin, H., Zhao, Y., 2015. Impact of environmental regulations on the
554
efficiency and CO 2 emissions of power plants in China. Appl. Energy 149, 238-
555
247.
556
557
Appendix:
558
Proof of Theorem 1:
559 560
The objective function of the manufacturer is shown as follows: max CM ( p, e) (a kp me)( p c1 he 2 b(e0 e)) bC . ( p ,e )
561
We firstly figure out solutions without considering the assumption e0 q C .
562
To solve the first-order condition CM / p a kp me k ( p c1 he2 b(e0 e)) 0 and
563
CM / e m( p c1 he 2 b(e0 e)) (a kp me)(b 2he) 0 ,
27
we get three solution groups.
ACCEPTED MANUSCRIPT 564
However, only one solution group satisfies positive demand and profit, and the
565
solution group is shown as follows:
566 567
p C [3m 2 4hk (kc1 kbe0 a ) kb(2m kb)] / (8hk 2 ) , eC (m kb) / (2kh) .
It is easy to find that the second-order condition Jacobian matrix:
568
2 CM 2 p 2 C M ep
2 CM 2k pe 2 CM 2m e 2
569
where q C [m 2 4hk (kc1 kbe0 a) kb(2m kb)] / (8hk ) . Thus, we have the solution group:
(hkq m ) is negative definite, 2 k 2m C
2
570
p C [3m 2 4hk (kc1 kbe0 a ) kb(2m kb)] / (8hk 2 ) , eC (m kb) / (2kh) ,
571
q C [m 2 4hk (kc1 kbe0 a ) kb(2m kb)] / (8hk ) .
572
However, the solution group may not match our assumption e0 q C . To solve this
573
problem, we present two scenarios to analyze it. One scenario is when e0 q C C 0 ,
574
these solutions meet our assumption in this scenario. The other scenario is e0 q C C ,
575
these solutions cannot meet our assumption.
576 577
Thus, under the scenario 1 when e0 q C C 0 , the above solution group meets the
assumption, the optimal solution is p C p C ,eC eC , q C q C .
578
Otherwise, under the scenario 2 when e0 q C C , the above solution group doesn’t
579
meet the assumption, and we find that the manufacturer can achieve maximal profit
580
when the production quantity is equal to the critical point
581
and p C [(a me)e0 C ] / (ke0 ) . Put them into the profit function, we can obtain the
582
profit function CM (e) C[(ae0 mee0 ) / (ke0 ) c1 he2 be0 be] / e0 bC . As it can be easily
583
seen that the second-order condition: 2 MC /(e)2 2hc / e0 0 . Thus, we can solve the
584
first-order condition: CM /(e) (m / k b 2eh)C / e0 0 to get eC (m kb) / (2kh) .
C e0
, thus we have q C C / e0
28
ACCEPTED MANUSCRIPT 585 586
Proof of Proposition 1:
587
(a) When C C , if C C , CM /(C ) b 0 ;
588
and if C C C , CM /(C ) {[m 2 4hk (kc1 a) kb(2m kb)]e0 8hkC} / (4hk 2 e0 2 ) 0 .
589
When C C , CM /(C ) {[m 2 4hk (kc1 a) kb(2m kb)]e0 8hkC} / (4hk 2 e0 2 ) 0 .
590
(b) When C C ,
591
CM /(b) C [e0 (m kb) / (2hk )][m 2 4hk (kc1 kbe0 a ) kb(2m kb)] / (8hk ) 0 .
592
When C C C ,
593
CM /(b) C [e0 (m kb) / (2hk )][m 2 4hk (kc1 kbe0 a ) kb(2m kb)] / (8hk ) 0 .
594
When C C , CM /(b) C (2m 2kb) / (4hke0 ) 0 .
595
Proof of Theorem 2:
596 597 598
The objective function of the manufacturer is max SM ( p, e) (a kp me)( p c1 he 2 ) . ( p ,e )
Solving the first-order condition SM /(p) a kp me k ( p c1 he2 ) 0 and
599
SM /(e) m( p c1 he 2 ) 2he(a kp me) 0 , we have three solution groups.
600
However, only one solution group satisfies positive demand and profit. The only one
601
solution group is p S [3m 2 4hk (kc1 a k )] / (8hk 2 ) and e S m / (2kh) . As it can be
602
easily seen that the second-order condition Jacobian matrix:
603
2 SM 2 p 2 S M ep
604 605
2 SM 2k pe 2 SM 2m e 2
(hkq m ) is negative definite. 2 k 2m S
2
Thus, the optimal retail price, environmental improvement level and production
quantity are p S [3m 2 4hk (kc1 a k )] / (8hk 2 ) , e S m / (2kh) and 29
ACCEPTED MANUSCRIPT
606
q S [m 2 4hk (kc1 k a )] (8hk ) .
607
Proof of theorem 3:
608
Under the scenario 1, that is the situation when e0 q C C 0 , the social welfare
609
function can be given as following:
610
SW1C
611 612
qC
0
( p p C )d q CM b((e0 eC )q C C ) v(e0 eC )q C .
In this scenario, the social welfare is not influenced by the cap. Thus, the optimal welfare of scenario 1 is
613
614 615 616
SW1C [m 2 k 2 b 2 4hk (kc1 kve0 a ) 2kv(m kb)]2 / (32k 3 h 2 ) [m 2 kb(3kb 2m) 4hk (kc1 kbe0 2kve0 a ) 4kv(m kb)]2 / (128k 3 h 2 ) .
Under the scenario 2, that is when e0 q C C , the objective of government is: max SW2C (C )
qC
0
(C )
( p p C )d q CM b((e0 eC )q C C ) v(e0 eC )q C
Thus, solving the first-order condition
618
SW2C (C ) e0 (m 2 k 2 b 2 2kv(m bk ) 4hk (kc1 a kve0 )) 4hkC 0, C 4hk 2 e0 2
619
cap is C e0 [m 2 k 2b 2 2kv(m bk ) 4hk (kc1 a kve0 )] / (4hk ) .
621 622
.
It is easy to verify that the second-order condition 2 SW2C / (C )2 1 / (e0 2 k ) 0 .
617
620
we have the optimal
Therefore the optimal social welfare is
SW2C [m 2 k 2 b 2 4hk (kc1 kve0 a ) 2kv(m kb)]2 / (32k 3 h 2 ) .
At last, we compare the social welfare under two scenarios, it is easy to find that
623
SW1C SW2C [m 2 kb(3kb 2m) 4hk (kc1 kbe0 2kve0 a ) 4kv(m kb)]2 / (128k 3 h 2 ) 0 .
624
Thus, we have the optimal cap and the optimal social welfare:
625
C e0 [m 2 k 2 b 2 2kv(m bk ) 4hk (kc1 a kve0 )] / (4hk ) ,
626
SW C [m 2 k 2 b 2 4hk (kc1 kve0 a ) 2kv(m kb)]2 / (32k 3 h 2 ) .
627 30
ACCEPTED MANUSCRIPT 628
Proof of theorem 4: Under LCSP, the social welfare function is
629 630
SW S ( )
qS
0
( p p S )d q SM q S v(e0 e S )q S .
SW S ( ) . It can be easily seen that The objective function of the government is max ( )
631 632
the second-order condition: 2 SW S / ( )2 1 / 4 0 . Thus solving the first-order
633
condition SW S / ( ) [m 2 4kmv 4hk (kc1 a 2kve0 k )] / (16hk ) 0 , we have the
634
optimal subsidy and the optimal social welfare:
635
[m 2 4kmv 4hk (kc1 a 2kve0 )] / (4hk 2 ) , SW S [m 2 2kmv 4hk (kc1 kve0 a)]2 / (32k 3 h 2 )
636
.
637 638 639 640
Proof of theorem 5: The optimal social welfare under CTP is
SW C [m 2 k 2 b 2 4hk (kc1 kve0 a ) 2kv(m kb)]2 / (32k 3 h 2 ) .
641
The optimal social welfare under LCSP is:
642
SW S [m 2 2kmv 4hk (kc1 kve0 a )]2 / (32k 3 h 2 ) .
643
We have SW C SW S [2m 2 k 2b 2 8hk (kc1 kve0 a) 2kv(2m kb)](2v b)b / (32kh 2 ) .
644
Thus, when b / 2 v , SW C SW S ; when b / 2 v , SW C SW S ; when b / 2 v ,
645
SW C =SW S
.
646
31