Department of Computer Science, Electrical and Space Engineering, Luleå University of Technology, SE-931 87 Skellefteå, Sweden.
Department of Computer Science & Engineering, University of Chittagong, Chattogram 4331, Bangladesh.
Sensors (Basel). 2020 Mar 31;20(7):1956. doi: 10.3390/s20071956.
Sensor data are gaining increasing global attention due to the advent of Internet of Things (IoT). Reasoning is applied on such sensor data in order to compute prediction. Generating a health warning that is based on prediction of atmospheric pollution, planning timely evacuation of people from vulnerable areas with respect to prediction of natural disasters, etc., are the use cases of sensor data stream where prediction is vital to protect people and assets. Thus, prediction accuracy is of paramount importance to take preventive steps and avert any untoward situation. Uncertainties of sensor data is a severe factor which hampers prediction accuracy. Belief Rule Based Expert System (BRBES), a knowledge-driven approach, is a widely employed prediction algorithm to deal with such uncertainties based on knowledge base and inference engine. In connection with handling uncertainties, it offers higher accuracy than other such knowledge-driven techniques, e.g., fuzzy logic and Bayesian probability theory. Contrarily, Deep Learning is a data-driven technique, which constitutes a part of Artificial Intelligence (AI). By applying analytics on huge amount of data, Deep Learning learns the hidden representation of data. Thus, Deep Learning can infer prediction by reasoning over available data, such as historical data and sensor data streams. Combined application of BRBES and Deep Learning can compute prediction with improved accuracy by addressing sensor data uncertainties while utilizing its discovered data pattern. Hence, this paper proposes a novel predictive model that is based on the integrated approach of BRBES and Deep Learning. The uniqueness of this model lies in the development of a mathematical model to combine Deep Learning with BRBES and capture the nonlinear dependencies among the relevant variables. We optimized BRBES further by applying parameter and structure optimization on it. Air pollution prediction has been taken as use case of our proposed combined approach. This model has been evaluated against two different datasets. One dataset contains synthetic images with a corresponding label of PM concentrations. The other one contains real images, PM concentrations, and numerical weather data of Shanghai, China. We also distinguished a hazy image between polluted air and fog through our proposed model. Our approach has outperformed only BRBES and only Deep Learning in terms of prediction accuracy.
由于物联网(IoT)的出现,传感器数据越来越受到全球关注。为了进行计算预测,会对这些传感器数据进行推理。基于大气污染预测生成健康警报、针对自然灾害预测提前规划脆弱地区人员的及时疏散等,都是传感器数据流的用例,其中预测对于保护人员和资产至关重要。因此,预测准确性对于采取预防措施和避免任何不利情况至关重要。传感器数据的不确定性是一个严重的因素,会影响预测准确性。基于规则的置信度专家系统(BRBES)是一种知识驱动的方法,是一种广泛应用的预测算法,可根据知识库和推理引擎处理此类不确定性。在处理不确定性方面,它比其他知识驱动技术(例如模糊逻辑和贝叶斯概率论)具有更高的准确性。相反,深度学习是一种数据驱动的技术,是人工智能(AI)的一部分。通过对大量数据进行分析,深度学习学习数据的隐藏表示。因此,深度学习可以通过推理可用数据(例如历史数据和传感器数据流)来推断预测。BRBES 和深度学习的联合应用可以通过解决传感器数据不确定性并利用其发现的数据模式来提高预测准确性。因此,本文提出了一种基于 BRBES 和深度学习集成方法的新型预测模型。该模型的独特之处在于开发了一种数学模型,将深度学习与 BRBES 相结合,并捕捉相关变量之间的非线性关系。我们通过对其进行参数和结构优化进一步优化了 BRBES。空气污染预测被用作我们提出的联合方法的用例。该模型已针对两个不同的数据集进行了评估。一个数据集包含具有 PM 浓度相应标签的合成图像。另一个数据集包含中国上海的真实图像、PM 浓度和气象数据。我们还通过我们提出的模型区分了污染空气和雾的朦胧图像。就预测准确性而言,我们的方法优于仅使用 BRBES 和仅使用深度学习的方法。