Lossless Compression of Cloud-cover Forecasts for Low-overhead Distribution in Solar-harvesting Sensor Networks

Christian Renner, Phu Anh Tuan Nguyen

Abstract

Combining local harvest patterns and global weather forecasts, e.g., cloud-cover forecasts, makes solar harvest predictions and online duty cycle adaptation more reliable. For this purpose, an energy and bandwidth efficient network-wide distribution of those forecasts is required. To meet this end, we propose compression methods for cloud-cover forecasts, so that they can be piggy-backed on regular network packets. We evaluate compression performance based on data collected from an online weather service for more than 14 months. We find that (i) cloud-cover forecasts can be compressed by up to 76%, (ii) fit into an average of 5 B for a one-day and 21 B for a seven-day forecast horizon, so that (iii) network-wide distribution leveraging, e.g., software acknowledgments used by prominent low-power data collection algorithms is achievable.
Original languageEnglish
Title of host publicationProceedings of the 2Nd International Workshop on Energy Neutral Sensing Systems
Number of pages6
Place of PublicationNew York, NY, USA
PublisherACM
Publication date06.11.2014
Pages43-48
ISBN (Print)978-1-4503-3189-0
DOIs
Publication statusPublished - 06.11.2014
Event2nd International Workshop on Energy Neutral Sensing Systems - Memphis, United States
Duration: 06.11.201406.11.2014
Conference number: 109622

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