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Abstract

Introduction of the discount factor avoids the data saturation of the additional loading loss factor during identification and separates the cutting power.

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Correspondence to Yan Wang .

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Wang, Y., Liu, CL., Ji, ZC. (2020). Energy-Efficient Process Parameters Optimizing Decision Method. In: Quantitative Analysis and Optimal Control of Energy Efficiency in Discrete Manufacturing System. Springer, Singapore. https://doi.org/10.1007/978-981-15-4462-0_10

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