基于决策树的森林火灾预测芯片系统

F. Abid, N. Izeboudjen
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引用次数: 2

摘要

在这项工作中,我们揭示了基于决策树的知识产权(IP)核心开发用于森林火灾预测。我们将其集成到构成传感器节点处理部分的基于MicroBlaze的SoC架构中。其目的是通过在传感器节点级别给出局部决策来加快预测过程。利用MATLAB工具对基于决策树的预测模型进行仿真和训练,生成决策树;其硬件开发之前采用的是高层次的综合方法。决策树分类器的准确率和召回率分别约为75%和0.88。基于决策树的森林火灾预测系统在芯片上的硬件实现结果表明,所开发的IP核所需资源较少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Decision Tree based System on Chip for Forest Fires Prediction
We expose in this work, the decision tree based intellectual property (IP) core development for forest fires prediction. We introduce its integration into the MicroBlaze based SoC architecture that constitutes the processing part of the sensor node. The aim is to speed up the predicting process by giving the decision locally at sensor node level. The decision tree based predictive model is simulated and trained using MATLAB tool for the tree generation; prior to its hardware development using the high level synthesis approach. The performance of the decision tree classifier in terms of accuracy and recall are about 75% and 0.88, respectively. The hardware implementation results of the decision tree based forest fires prediction system on chip show that the developed IP core requires few resources.
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