Multi-objective Optimal Control of Dynamic Integrated Model of Climate
and Economy: Evolution in Action
- URL: http://arxiv.org/abs/2007.00449v1
- Date: Mon, 29 Jun 2020 20:41:34 GMT
- Title: Multi-objective Optimal Control of Dynamic Integrated Model of Climate
and Economy: Evolution in Action
- Authors: Mostapha Kalami Heris and Shahryar Rahnamayan
- Abstract summary: One of the widely used models for studying economics of climate change is the Dynamic Integrated model of Climate and Economy (DICE)
In this paper, a bi-objective optimal control problem defined on DICE model, objectives of which are maximizing social welfare and minimizing the temperature deviation of atmosphere.
Results show that temperature deviation cannot go below a certain lower limit, unless we have significant technology advancement or positive change in global conditions.
- Score: 0.8756822885568589
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: One of the widely used models for studying economics of climate change is the
Dynamic Integrated model of Climate and Economy (DICE), which has been
developed by Professor William Nordhaus, one of the laureates of the 2018 Nobel
Memorial Prize in Economic Sciences. Originally a single-objective optimal
control problem has been defined on DICE dynamics, which is aimed to maximize
the social welfare. In this paper, a bi-objective optimal control problem
defined on DICE model, objectives of which are maximizing social welfare and
minimizing the temperature deviation of atmosphere. This multi-objective
optimal control problem solved using Non-Dominated Sorting Genetic Algorithm II
(NSGA-II) also it is compared to previous works on single-objective version of
the problem. The resulting Pareto front rediscovers the previous results and
generalizes to a wide range of non-dominant solutions to minimize the global
temperature deviation while optimizing the economic welfare. The previously
used single-objective approach is unable to create such a variety of
possibilities, hence, its offered solution is limited in vision and reachable
performance. Beside this, resulting Pareto-optimal set reveals the fact that
temperature deviation cannot go below a certain lower limit, unless we have
significant technology advancement or positive change in global conditions.
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