工业物联网中使用机器学习的数据压缩和预测

Jun-Su Park, Hyunjae Park, Young-June Choi
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引用次数: 29

摘要

工业物联网产生的大数据有助于从数据分析中获得洞察力,但存储所有数据是一种负担。为了解决这个问题,我们提出使用神经网络回归将工业数据压缩成具有有损压缩的代表性向量。为了提高压缩效率,我们采用了分而治之的方法,使工业数据可以按数据块大小进行处理。通过实验,验证了用函数表示工业数据,预测精度高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data compression and prediction using machine learning for industrial IoT
Industrial IoT generates big data that is useful for getting insight from data analysis but storing all the data is a burden. To resolve it, we propose to compress the industrial data using neural network regression into a representative vector with lossy compression. For efficiency of the compression, we use the divide-and-conquer method such that the industrial data can be handled by the chunk size of data. Through our experiments, we verify that industrial data is represented by a function and predicted with high accuracy.
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