利用全局集合回声状态网络的可解释人工智能进行人群预测

IF 5.2 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Chamod Samarajeewa;Daswin De Silva;Milos Manic;Nishan Mills;Prabod Rathnayaka;Andrew Jennings
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引用次数: 0

摘要

人群监测是智能城市、公共交通和公共安全等不同行业领域的一项主要功能。近来,低能耗设备和快速连接技术的进步使实时数据流的生成成为可能,适用于人群监控应用。人群预测通常使用深度学习模型来学习数据流不断变化的性质。计算复杂性、执行时间和不透明性是深度学习模型所面临的固有挑战,同时也会忽略多个实时数据流之间的潜在关系以提高准确性。为了应对这些挑战,我们提出了利用多个 WiFi 数据流进行可解释人群预测的全局集合回声状态网络方法。这种方法用聚类层取代了随机输入映射层,使网络能够学习聚类中心点上的输入投影。它包含了一个集合读出,由一叠提供模型可解释性的存储层组成。它还能并行学习多个相关的时间序列,以构建一个全局模型,充分利用数据流之间的潜在关系。这种方法在一个多校区、混合使用的高等教育环境中进行了实证评估。结果证实了所提出的方法在人群预测行业应用中的有效性和可解释性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explainable Artificial Intelligence for Crowd Forecasting Using Global Ensemble Echo State Networks
Crowd monitoring is a primary function in diverse industrial domains, such as smart cities, public transport, and public safety. Recent advancements in low-energy devices and rapid connectivity have enabled the generation of real-time data streams suitable for crowd-monitoring applications. Crowd forecasting is typically achieved using deep learning models that learn the evolving nature of data streams. The computational complexity, execution time, and opaqueness are inherent challenges of deep learning models that also overlook the latent relationships between multiple real-time data streams for improved accuracy. To address these challenges, we propose the global ensemble echo state network approach for explainable crowd forecasting using multiple WiFi data streams. This approach replaces the random input mapping layer with a clustering layer, allowing the network to learn input projections on cluster centroids. It incorporates an ensemble readout comprising a stack of reservoir layers that provide model explainability. It also learns multiple related time series in parallel to construct a global model that leverage latent relationships across the data streams. This approach was empirically evaluated in a multicampus, mixed-use tertiary education setting. The results of which confirm the effectiveness and interpretability of the proposed approach for industrial applications of crowd forecasting.
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来源期刊
IEEE Open Journal of the Industrial Electronics Society
IEEE Open Journal of the Industrial Electronics Society ENGINEERING, ELECTRICAL & ELECTRONIC-
CiteScore
10.80
自引率
2.40%
发文量
33
审稿时长
12 weeks
期刊介绍: The IEEE Open Journal of the Industrial Electronics Society is dedicated to advancing information-intensive, knowledge-based automation, and digitalization, aiming to enhance various industrial and infrastructural ecosystems including energy, mobility, health, and home/building infrastructure. Encompassing a range of techniques leveraging data and information acquisition, analysis, manipulation, and distribution, the journal strives to achieve greater flexibility, efficiency, effectiveness, reliability, and security within digitalized and networked environments. Our scope provides a platform for discourse and dissemination of the latest developments in numerous research and innovation areas. These include electrical components and systems, smart grids, industrial cyber-physical systems, motion control, robotics and mechatronics, sensors and actuators, factory and building communication and automation, industrial digitalization, flexible and reconfigurable manufacturing, assistant systems, industrial applications of artificial intelligence and data science, as well as the implementation of machine learning, artificial neural networks, and fuzzy logic. Additionally, we explore human factors in digitalized and networked ecosystems. Join us in exploring and shaping the future of industrial electronics and digitalization.
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