Exploring the impact of key performance factors on energy markets: From energy risk management perspectives

Mangla, Sachin Kumar, Srivastava, Praveen Ranjan, Eachempati, Prajwal and Tiwari, Aviral Kumar (2024) Exploring the impact of key performance factors on energy markets: From energy risk management perspectives. Energy Economics, 131. ISSN 0140-9883 (In Press)

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Abstract

Currently, there are limited mechanisms to control harmful greenhouse gas emissions. There is a need to contain these emissions at the source level; understanding the root cause is imperative. This would aid in monitoring and curbing those factors to minimize these harmful emissions and control incidences of energy risk. While there are studies evidencing the role of generic indicators like per capita carbon consumption on greenhouse gas levels, these are also equally influenced by climatic risk factors such as surface temperature. Research suggests that climatic factors significantly impact fluctuating greenhouse gas emissions. However, existing studies have not quantified the precise extent to which these factors drive harmful emissions, which, in turn, also curb energy efficiency and increase the costs of generation of energy alternatives. To address this gap, the outcome variable ‘Total greenhouse gas emissions including land-use change and forestry' is examined using advanced machine learning algorithms such as Random Forest, Multi-layer perceptron models and Deep Neural Networks. Algorithms are chosen in the hierarchical order of accuracy to capture the differential capabilities of detecting the causation factors of harmful emissions. While the above algorithms see the essential features in terms of absolute value, there is a need to examine how each factor contributes to the emissions relative to the others. The Shapley framework of Explainable AI is therefore employed to scientifically assess the influence of different factors on consumption levels. The outcomes of the Shapley analysis are then validated through regression and further supported by the Fuzzy Analytical Hierarchy Process (AHP). The research also proposes adopting association rule mining to analyze the co-occurrence of specific climatic conditions on energy consumption. The findings of this study offer valuable insights for both society and experts in climate and energy, enabling them to develop specific strategies and targeted climatic policies for effective energy risk management. This would present an opportunity for economic transformation, job creation, technological advancement, and improved environmental and public health outcomes. While initial costs and challenges may be associated with a transition, the long-term benefits would help attain sustainable energy economics.

Item Type: Article
Keywords: Energy-Efficient systems | Machine learning | AI | Shapley analysis | Fuzzy Analytical Hierarchy Process
Subjects: Social Sciences and humanities > Business, Management and Accounting > Strategy and Management
Social Sciences and humanities > Business, Management and Accounting > Business and International Management
Social Sciences and humanities > Social Sciences > Social Sciences (General)
JGU School/Centre: Jindal Global Business School
Depositing User: Subhajit Bhattacharjee
Date Deposited: 30 Mar 2024 12:19
Last Modified: 30 Mar 2024 12:19
Official URL: https://doi.org/10.1016/j.eneco.2024.107373
URI: https://pure.jgu.edu.in/id/eprint/7552

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