As the typical particle-reinforced aluminum matrix composite, SiCp/Al composite has low density, high elastic modulus and high thermal conductivity, and is one of the most competitive metal matrix composites. Grinding is the main processing technique of SiCp/Al composite, energy consumption of the grinding process provides guidance for the energy saving, which is the aim of green manufacturing. In this paper, grinding experiments were designed and conducted to obtain the energy consumption of the grinding machine tool. The Particle Swarm Optimization(PSO) BP neural network prediction model was applied in the energy consumption prediction model of SiCp/Al composite in grinding. It showed that the Particle Swarm Optimization(PSO) BP neural network prediction model has high prediction accuracy. The prediction model of energy consumption based on PSO-BP neural network is helpful in energy saving, which contributes to greening manufacturing.

Energy Consumption Prediction Model of SiCp/Al Composite in Grinding Based on PSO-BP Neural Network / Gu, Peng; Zhu, Chuan Min; Wu, Yin Yue; Mura, Andrea. - STAMPA. - 305:(2020), pp. 163-168. (Intervento presentato al convegno 3rd International Conference on Sensors, Materials and Manufacturing, ICSMM 2019, 10th International Conference on Manufacturing Science and Technology, ICMST 2019, and International Conference on Functional Materials and Applied Technologies, FMAT 2019 tenutosi a Taipei nel 18 November 2019through 20 November 2019) [10.4028/www.scientific.net/SSP.305.163].

Energy Consumption Prediction Model of SiCp/Al Composite in Grinding Based on PSO-BP Neural Network

Mura, Andrea
2020

Abstract

As the typical particle-reinforced aluminum matrix composite, SiCp/Al composite has low density, high elastic modulus and high thermal conductivity, and is one of the most competitive metal matrix composites. Grinding is the main processing technique of SiCp/Al composite, energy consumption of the grinding process provides guidance for the energy saving, which is the aim of green manufacturing. In this paper, grinding experiments were designed and conducted to obtain the energy consumption of the grinding machine tool. The Particle Swarm Optimization(PSO) BP neural network prediction model was applied in the energy consumption prediction model of SiCp/Al composite in grinding. It showed that the Particle Swarm Optimization(PSO) BP neural network prediction model has high prediction accuracy. The prediction model of energy consumption based on PSO-BP neural network is helpful in energy saving, which contributes to greening manufacturing.
2020
978-3-0357-1657-3
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/2834832