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Comprehensive evaluation method for performance of unmanned robot applied to automotive test using fuzzy logic and evidence theory and FNN

机译:使用模糊逻辑和证据理论应用于汽车测试的无人机机器人的综合评价方法及FNN

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摘要

In order to obtain reliable and exact evaluation, a new comprehensive evaluation method for performance of an unmanned robot applied to automotive test (URAT) using fuzzy logic, evidence theory and fuzzy neural network (FNN) is presented in this paper. Throttle repeatability, speed tracking accuracy, speed repeatability, driving shock degree are used as the system evaluation index. The subjective evaluation results with various expressions are quantified using fuzzy logic. The group decision making with quantified subjective evaluation results from various drivers is combined through evidence theory. The objective evaluation indexes measured by instrumentation and the corresponding combined subjective evaluation are self-learned and trained with FNN. The comprehensive performance evaluation system of the URAT is established. Finally, real vehicle experiments are conducted. The effectiveness of the presented method for the URAT is experimentally verified. (C) 2018 Elsevier B.V. All rights reserved.
机译:为了获得可靠和精确的评估,本文提出了一种新的综合评价方法,用于使用模糊逻辑,证据理论和模糊神经网络(FNN)应用于汽车测试(URAT)的无人机机器人的性能。节流重复性,速度跟踪精度,速度可重复性,驱动休闲度用作系统评估指标。使用模糊逻辑量化具有各种表达的主观评估结果。通过证据理论结合了各种司机的量化主观评价结果的组决策。通过仪器测量的客观评估指标和相应的组合主观评估是自动学习和培训的FNN。建立了URAT的综合性能评估系统。最后,进行了真实的车辆实验。提出的URAT方法的有效性是通过实验验证的。 (c)2018 Elsevier B.v.保留所有权利。

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