DTFL-DF:由联合学习决策森林驱动的数字孪生架构,用于减少采矿业的火灾事故

Udayakumar Kamalakannan, Ramamoorthy Sriramulu, Poorvadevi Ramamurthi
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引用次数: 0

摘要

自动化是这个新时代的指导原则,尽管人类面临着自动化带来的各种问题,但技术简化了许多行业的高难度工作,使人们受益匪浅。经常发生不可预见事故的采矿业就是这样一个需要完全自动化的行业。在这项工作中,我们提供了一种新的模拟处理环境,称为 DTFL-DF--数字孪生联合学习决策森林,这是一种数字孪生环境,专门用于处理不可预见的火灾事故,是避免采矿业发生这些意外灾难的一种手段。虽然本文介绍的设计旨在用于采矿业,但也可应用于其他行业。本研究的总体技术贡献在于保证实时数据的处理,以便在不依赖过去数据的情况下成功处理关键任务操作。这是通过调整数字孪生的原始设计和在边缘雾层中分配处理环境来实现的。稳健性分析、分类模型性能评估等形式的结果分析为所建议的方法提供了有力支持。为了处理分散训练程序,提出了一种名为 FL-DF 的全新算法,以加快分类速度并防止任何形式的灾难。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DTFL‐DF: Digital twin architecture powered by federated learning decision forest to mitigate fire accidents in mining industry
Automation is the guiding principle of this new era, and despite the problems that humanity faces as a result of automation, technology has greatly benefitted people by streamlining challenging jobs across many industries. The mining business, where there are frequently unforeseen mishaps, is one such industry that requires complete automation. In this work, a new simulative processing environment termed DTFL‐DF—Digital twin federated learning decision forest a digital twin environment that is tailored to handle unforeseen fire incidents—is offered as a means of avoiding these unplanned catastrophes in the mining industry. Although the design presented here is intended for usage in the mining sector, it can also be applied to other sectors. The overall technological contribution of this study is to guarantee the processing of real‐time data in order to successfully handle mission‐critical operations without relying on past data. This is accomplished by adapting the digital twin's original design and distributing the processing environment within the edge‐fog layer. Results analysis in the form of robustness analysis, performance evaluation of the classification model, etc. provides strong support for the suggested methodology. For handling the decentralized training procedure, a brand‐new algorithm termed FL‐DF is put forth in order to speed up classification and prevent any sort of catastrophe.
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