论文标题
云能量微分数据分类:平台研究
Cloud Energy Micro-Moment Data Classification: A Platform Study
论文作者
论文摘要
能源效率是我们星球福祉的关键因素。同时,机器学习(ML)在自动化生活和创造方便的工作流程以增强行为方面发挥了重要作用。因此,分析能量行为可以帮助理解弱点,并为更好的干预措施铺平道路。朝着更高的性能迈进,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。在消费者参与度较大的保护下,通过利用微时刻和移动推荐系统(EM)3框架,我们旨在通过提高其功耗意识来影响消费者的行为改变。在本文中,与微弹分类进行了基准测试和比较。 Amazon Web服务,Google Cloud Platform,Google Colab和Microsoft Azure机器学习用于模拟和真实的能源消耗数据集。已使用KNN,DNN和SVM分类器。在选定的云平台中观察到了出色的性能,显示了相对接近的性能。但是,某些算法的性质限制了训练性能。
Energy efficiency is a crucial factor in the well-being 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 micro-moment classification. The 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.