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Data-Driven Soft Sensor Modeling for Algal Blooms Monitoring

机译:数据驱动的软传感器建模,用于藻华监测

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Currently, salvage is considered as an effective way for protecting ecosystems of inland water from toxin-producing algal blooms. Yet, the magnitude of algal blooms, which is the essential information required for dispatching salvage boats, cannot be estimated accurately with low cost in real time. In this paper, a data-driven soft sensor is proposed for algal blooms monitoring, which estimates the magnitude of algal blooms using data collected by inexpensive water quality sensors as input. The modeling of the soft sensor consists of two steps: 1) magnitude calculation and 2) regression model training. In the first step, we propose an active learning strategy to construct high-accuracy image classification model with % less labeled data. Based on this model, we design a new algorithm that recognizes algal blooms and calculates the magnitude using water surface pictures. In the second step, we propose to use Gaussian process to train the regression model that maps the multiparameter water quality sensor data to the calculated magnitude of algal blooms and learn the parameters of the model automatically from the training data. We conduct extensive experiments to evaluate our modeling method, AlgaeSense, based on over 200 000 heterogeneous sensor data records collected in four months from our field-deployed sensor system. The results indicate that the soft sensor can accurately estimate the magnitude of algal blooms in real time using data collected by just three kinds of inexpensive water quality sensors.
机译:目前,打捞被认为是保护内陆水域生态系统免于产生毒素的藻华的有效方法。然而,藻花的数量是派遣救助船所需的基本信息,它不能以低成本实时估算。在本文中,提出了一种数据驱动的软传感器用于藻华监测,该传感器使用廉价水质传感器收集的数据作为输入来估算藻华的大小。软传感器的建模包括两个步骤:1)幅度计算和2)回归模型训练。第一步,我们提出一种主动学习策略,以减少标签数据的百分比来构建高精度图像分类模型。基于此模型,我们设计了一种新算法,该算法可识别藻华并使用水面图片计算震级。在第二步中,我们建议使用高斯过程来训练将多参数水质传感器数据映射到计算出的藻华数量的回归模型,并从训练数据中自动学习模型的参数。我们进行了广泛的实验,以基于在四个月内从现场部署的传感器系统中收集的200,000多种异构传感器数据记录,评估我们的建模方法AlgaeSense。结果表明,软传感器仅使用三种廉价的水质传感器收集的数据就可以实时准确地估计藻华的大小。

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