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The Birmingham Urban Climate Laboratory: an open meteorological test bed and challenges of the smart city

Chapman, L., Muller, C. L., Young, D. T., Warren, E. L., Grimmond, C. S. B. ORCID:, Cai, X.-M. and Ferranti, E. J. S. (2015) The Birmingham Urban Climate Laboratory: an open meteorological test bed and challenges of the smart city. Bulletin of the American Meteorological Society, 96 (9). pp. 1545-1560. ISSN 1520-0477

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To link to this item DOI: 10.1175/BAMS-D-13-00193.1


Existing urban meteorological networks have an important role to play as test beds for inexpensive and more sustainable measurement techniques that are now becoming possible in our increasingly smart cities. The Birmingham Urban Climate Laboratory (BUCL) is a near-real-time, high-resolution urban meteorological network (UMN) of automatic weather stations and inexpensive, nonstandard air temperature sensors. The network has recently been implemented with an initial focus on monitoring urban heat, infrastructure, and health applications. A number of UMNs exist worldwide; however, BUCL is novel in its density, the low-cost nature of the sensors, and the use of proprietary Wi-Fi networks. This paper provides an overview of the logistical aspects of implementing a UMN test bed at such a density, including selecting appropriate urban sites; testing and calibrating low-cost, nonstandard equipment; implementing strict quality-assurance/quality-control mechanisms (including metadata); and utilizing preexisting Wi-Fi networks to transmit data. Also included are visualizations of data collected by the network, including data from the July 2013 U.K. heatwave as well as highlighting potential applications. The paper is an open invitation to use the facility as a test bed for evaluating models and/or other nonstandard observation techniques such as those generated via crowdsourcing techniques.

Item Type:Article
Divisions:Science > School of Mathematical, Physical and Computational Sciences > Department of Meteorology
ID Code:52053
Publisher:American Meteorological Society


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