Analyzing the Key Performance Indicators of Advanced Sustainable Manufacturing System Using AHP Approach

  • Ranjitsinh A. Deshmukh
  • Rahul Hiremath
Conference paper


The objective focused for the current study is to incorporate the latest techniques including energy saving methods, to promote advanced sustainable manufacturing. The study at hand analyzes the drivers of energy saving method through a proposed framework validated through a case study in India. Key performance indicators are collected from the literature, calibrated with speculations from professionals, and investigated through the analytical hierarchy process (AHP), which is a (MCDM) multi-criteria decision making approach. The present study reveals that flue gas losses are the primary markers that seriously have an effect on energy efficiency methods. Manufacturers can easily note the top-ranked driver and adapt it to implement advanced sustainable manufacturing decisively.


Analytical hierarchy process (AHP) Multi-criteria decision making (MCDM) Sustainable manufacturing etc. 


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Copyright information

© Springer Nature Switzerland AG 2020

Authors and Affiliations

  • Ranjitsinh A. Deshmukh
    • 1
  • Rahul Hiremath
    • 2
  1. 1.Walchnad Institute of TechnologySolapurIndia
  2. 2.SCMHRDPuneIndia

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