基于数据包络分析的减排任务分配方法

A DEA-based approach for allocation of emission reduction tasks

International Journal of Production Research · 2016
被引 39
ABS 3

中文导读

提出一种基于企业历史生产数据构建技术方案的数据包络分析方法,用于在排放许可总量限制下分配减排任务,帮助企业确定最优排放许可使用量并最大化最低满意度。

Abstract

Rapid economic growth has led to increasing pollution emission, leading governments to require emission reductions by specific amounts. The allocation of specific emission reduction tasks has become a significant issue and has drawn the attention of academia. Data envelopment analysis (DEA) has been extended to construct the allocation of emission reduction tasks model. These previous DEA-based approaches have strong assumptions about individual enterprise production. In this paper, we propose a new method to accurately assess the production, using each enterprise’s previously observed production to construct its own production technology plan. With emission permits decreased, the enterprise can have new production strategy based on its own technology. Assuming emission permits can be freely bought and sold, we show how each enterprise can determine the optimal amount of emission allowance that should be used for production, which may leave some allowance to be sold for extra profit or may require the purchase of permits from other firms. Considering the limitation on the total allowance from emission permits, we introduce the concept of satisfaction degree and use it in maximising the minimum enterprise satisfaction degree. Last, a numerical example is presented and an empirical application is given to verify the proposed approach.

数据包络分析环境经济学减排任务分配生产策略