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A Neural Network Approach for Predicting Manufacturing Performance using Knowledge Management Metrics

机译:使用知识管理指标预测制造性能的神经网络方法

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摘要

This paper aims to devise a model for predicting the knowledge management (KM) effect on manufacturing performance via neural network (NN). This is the first empirical study that applies NN to forecast manufacturing performance using 48 KM metrics which cover knowledge resources, KM processes, and KM factors. The training, validation, and testing of the NN model were based on 580 usable data points of KM and manufacturing performance collected from manufacturing companies in Malaysia. The research findings reveal that the NN model serves as a reliable yet simple tool to predict the manufacturing performance of a company by considering various essential KM metrics. The network prediction is in good correlation with the actual data. Lastly, the prediction model will be useful for practitioners to determine future KM strategies and targets to improve manufacturing performance.
机译:本文旨在设计一种模型,用于通过神经网络(NN)预测知识管理(KM)对制造性能的影响。这是第一项将NN用于使用48个KM指标来预测制造性能的实证研究,该指标涵盖知识资源,KM过程和KM因素。 NN模型的训练,验证和测试是基于580个可用的知识管理数据点和从马来西亚的制造公司收集的制造性能得出的。研究结果表明,通过考虑各种基本的KM指标,NN模型可作为预测公司制造绩效的可靠而简单的工具。网络预测与实际数据具有良好的相关性。最后,预测模型将对从业人员确定未来的知识管理策略和目标以提高制造绩效很有用。

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