Title: Energy consumption assessment and optimisation of manufacturing sectors by clustered stochastic data envelopment analysis
Authors: Ali Azadeh; Sara Motevali Haghighi; Abbas Keramati
Addresses: School of Industrial Engineering, Center of Excellence for Intelligent-Based Experimental Mechanics, College of Engineering, University of Tehran, Iran ' School of Industrial Engineering, Center of Excellence for Intelligent-Based Experimental Mechanics, College of Engineering, University of Tehran, Iran; Department of Industrial Engineering, Esfarayen University of Technology, Esfarayen, 9661998195, Iran ' School of Industrial Engineering, Center of Excellence for Intelligent-Based Experimental Mechanics, College of Engineering, University of Tehran, Iran
Abstract: This paper presents an approach based on stochastic data envelopment analysis (SDEA) and clustering analysis to assess and optimise energy consumption in manufacturing sectors. Fossil fuel consumption, electricity consumption, total weighted production, and average weighted boiling point are considered as key performance indicators in this study. SDEA is tailored and used to alleviate data uncertainty and randomness for energy consumption problem. Clustering analysis is used to achieve homogeneity between decision-making units (DMUs). Noise and sensitivity analyses are performed to select the best α of SDEA model and also to identify the most important shaping factor. The results show that total weighted production is the most influential shaping factor in this study. Also, the distance between ideal and real value of each factor is estimated in order to help decision makers in improving performance. Finally, the proposed model is validated and verified through a robust analysis. The proposed approach would help decision makers to have a comprehensive understanding of energy consumption in manufacturing sectors. To the best of our knowledge, this is the first study to assess and optimise energy consumption of manufacturing sectors by clustered stochastic data envelopment analysis.
Keywords: energy consumption; optimisation; manufacturing sector; stochastic data envelopment analysis; cluster analysis.
DOI: 10.1504/IJSOM.2018.091904
International Journal of Services and Operations Management, 2018 Vol.30 No.2, pp.151 - 185
Received: 12 Mar 2016
Accepted: 22 Aug 2016
Published online: 21 May 2018 *