Inferring Air Quality for Station Location Recommendation Based on Urban Big Data

Hsun-Ping Hsieh, Shou-de Lin, Yu Zheng
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引用次数: 152

Abstract

This paper tries to answer two questions. First, how to infer real-time air quality of any arbitrary location given environmental data and historical air quality data from very sparse monitoring locations. Second, if one needs to establish few new monitoring stations to improve the inference quality, how to determine the best locations for such purpose? The problems are challenging since for most of the locations (>99%) in a city we do not have any air quality data to train a model from. We design a semi-supervised inference model utilizing existing monitoring data together with heterogeneous city dynamics, including meteorology, human mobility, structure of road networks, and point of interests (POIs). We also propose an entropy-minimization model to suggest the best locations to establish new monitoring stations. We evaluate the proposed approach using Beijing air quality data, resulting in clear advantages over a series of state-of-the-art and commonly used methods.
基于城市大数据的站点选址空气质量推断
本文试图回答两个问题。首先,如何在给定环境数据和历史空气质量数据的情况下,从非常稀疏的监测地点推断任意地点的实时空气质量。第二,如果需要新建少量监测站来提高推断质量,如何确定最佳位置?这些问题是具有挑战性的,因为我们没有任何空气质量数据来训练模型。我们设计了一个半监督推理模型,利用现有的监测数据以及异构城市动态,包括气象、人类流动性、道路网络结构和兴趣点(poi)。我们还提出了一个熵最小模型来建议建立新监测站的最佳位置。我们使用北京的空气质量数据对建议的方法进行了评估,结果明显优于一系列最先进和常用的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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