基于GRNN的SIR-EPDM混合比估计

C. Vaithilingam, R. Deepalaxmi
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引用次数: 0

摘要

工程系统的控制和仪表(C&I)电路同样至关重要,因为即使是一个小故障也可能导致工厂的大停工或可能导致重大事故。因此,C&I电路的设计需要同时考虑电气和机械参数。电缆材料除具有良好的电性能外,还应具有理想的机械性能。因此,有必要寻找具有所需电气和机械性能的合适电缆材料。通过适当混合现有材料制备新的电缆材料,效果较好。本文提出了一种基于广义回归神经网络(GRNN)的硅橡胶(SiR)与三元乙丙橡胶(EPDM)共混比例识别方法。SiR-EPDM共混物的五种不同组成(A-90/10)B-70/30;C-50/50;D-30/70;E 10/90)。拉伸强度(TS)、断裂伸长率(EB)、硬度(H)等力学参数和体积电阻率(VRY)、表面电阻率(SRY)、抗弧时间(ART)、比较跟踪指数(CTI)、击穿电压(BDV)、介电强度(DS)、介电常数(DC)等电学参数均按照ASTM/IEC标准进行测量。利用实测数据对GRNN模型进行训练。采用MATLAB-SIMULINK对所提出的GRNN模型进行了新数据集的测试。试验结果表明,GRNN模型可以有效地识别SiR -EPDM共混比,以满足任何特定应用所需的机电参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of SIR-EPDM blend ratio using GRNN
The control and instrumentation (C&I) circuits of engineering systems are equally critical as even a minor fault may leads to major shut down of plants or may leads to major accidents. Hence the (C&I) circuits need to be designed considering both electrical and mechanical parameters. The cable materials, besides possessing good electrical properties should also have desired mechanical properties. Hence it becomes necessary to find suitable cable material that possesses required electrical and mechanical properties. The preparation of new cable material by suitably blending existing material provides better results. This paper presents a method of identifying the suitable blend ratio of Silicone Rubber (SiR) and Ethylene Propylene Diene Monomer (EPDM) using Generalized Regression Neural Network (GRNN). The five different compositions of SiR-EPDM blends (A-90/10; B-70/30; C-50/50; D-30/70; E 10/90) were prepared. The mechanical parameters like tensile strength (TS), elongation at break (EB), Hardness (H) and the electrical parameters like volume resistivity (VRY), surface resistivity (SRY), arc resistance time (ART), comparative tracking index (CTI), Breakdown Voltage (BDV), Dielectric Strength (DS), Dielectric Constant (DC) were measured as per ASTM/IEC standards. The GRNN model was trained using the measured data. The proposed GRNN model has been tested with new data sets using MATLAB-SIMULINK. The test result reveals that GRNN model can effectively identify the SiR -EPDM blend ratio in order to meet the required electro-mechanical parameters for any specific application.
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