| Literature DB >> 26807713 |
John D Albertson, Tierney Harvey, Greg Foderaro, Pingping Zhu, Xiaochi Zhou, Silvia Ferrari, M Shahrooz Amin1, Mark Modrak1, Halley Brantley2, Eben D Thoma2.
Abstract
This paper addresses the need for surveillance of fugitive methane emissions over broad geographical regions. Most existing techniques suffer from being either extensive (but qualitative) or quantitative (but intensive with poor scalability). A total of two novel advancements are made here. First, a recursive Bayesian method is presented for probabilistically characterizing fugitive point-sources from mobile sensor data. This approach is made possible by a new cross-plume integrated dispersion formulation that overcomes much of the need for time-averaging concentration data. The method is tested here against a limited data set of controlled methane release and shown to perform well. We then present an information-theoretic approach to plan the paths of the sensor-equipped vehicle, where the path is chosen so as to maximize expected reduction in integrated target source rate uncertainty in the region, subject to given starting and ending positions and prevailing meteorological conditions. The information-driven sensor path planning algorithm is tested and shown to provide robust results across a wide range of conditions. An overall system concept is presented for optionally piggybacking of these techniques onto normal industry maintenance operations using sensor-equipped work trucks.Entities:
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Year: 2016 PMID: 26807713 DOI: 10.1021/acs.est.5b05059
Source DB: PubMed Journal: Environ Sci Technol ISSN: 0013-936X Impact factor: 9.028