云能量微矩数据分类:平台研究

A. Alsalemi, Ayman Al-Kababji, Yassine Himeur, F. Bensaali, A. Amira
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引用次数: 12

摘要

能源效率对我们这个星球的福祉至关重要。与此同时,机器学习(ML)在自动化我们的生活和创建方便的工作流程以增强行为方面发挥着重要作用。因此,分析能源行为可以帮助了解弱点,并为更好的干预铺平道路。向更高的性能发展,云平台可以帮助研究人员进行需要高计算能力的分类试验。在利用微朋友圈和移动推荐系统(EM)3框架的消费者参与节能行为的大保护伞下,我们的目标是通过提高消费者的能耗意识来影响消费者的行为改变。本文对常用的云人工智能平台进行了微瞬间分类的基准测试和比较。亚马逊网络服务、谷歌云平台、谷歌Colab和微软Azure机器学习被用于模拟和真实的能源消耗数据集。采用了KNN、DNN和SVM分类器。所选云平台的性能非常好,性能比较接近。然而,一些算法的性质限制了训练性能。
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Cloud Energy Micro-Moment Data Classification: A Platform Study
Energy efficiency is a crucial factor in the wellbeing of our planet. In parallel, Machine Learning (ML) plays an instrumental role in automating our lives and creating convenient workflows for enhancing behavior. So, analyzing energy behavior can help understand weak points and lay the path towards better interventions. Moving towards higher performance, cloud platforms can assist researchers in conducting classification trials that need high computational power. Under the larger umbrella of the Consumer Engagement Towards Energy Saving Behavior by means of Exploiting Micro Moments and Mobile Recommendation Systems (EM)3 framework, we aim to influence consumers’ behavioral change via improving their power consumption consciousness. In this paper, common cloud artificial intelligence platforms are benchmarked and compared for micromoment classification. Amazon Web Services, Google Cloud Platform, Google Colab, and Microsoft Azure Machine Learning are employed on simulated and real energy consumption datasets. The KNN, DNN, and SVM classifiers have been employed. Superb performance has been observed in the selected cloud platforms, showing relatively close performance. Yet, the nature of some algorithms limits the training performance.
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