Affiliation:
1. School of Computer Science, Northwestern Polytechnical University
2. School of Software, Northwestern Polytechnical University
3. Institute of Automation Chinese Academy of Sciences
4. Kelley School of Business, Indiana University
Abstract
With the proliferation of Internet of Things (IoT) devices in the consumer market, the unprecedented sensing capability of IoT devices makes it possible to develop advanced sensing and complex inference tasks by leveraging heterogeneous sensors embedded in IoT devices. However, the limited power supply and the restricted computation capability make it challenging to conduct seamless sensing and continuous inference tasks on resource-constrained devices. How to conduct energy-efficient sensing and perform rich-sensor inference tasks on IoT devices is crucial for the success of IoT applications. Therefore, we propose a novel energy-efficient collaborative sensing framework to optimize the energy consumption of IoT devices. Specifically, we explore the latent correlations among heterogeneous sensors via an attention mechanism in temporal convolutional network to quantify the dependency among sensors, and characterize the heterogeneous sensors in terms of energy consumption to categorize them into
low-power sensors
and
energy-intensive sensors
. Finally, to decrease the sampling frequency of
energy-intensive sensors
, we propose a multi-task learning strategy to predict the statuses of
energy-intensive sensors
based on the
low-power sensors
. To evaluate the performance of the proposed collaborative sensing framework, we develop a mobile application to collect concurrent heterogeneous data streams from all sensors embedded in Huawei Mate 8. The experimental results show that latent correlation learning is greatly helpful to understand the latent correlations among heterogeneous streams, and it is feasible to predict the statuses of
energy-intensive sensors
by
low-power sensors
with high accuracy and fast convergence. In terms of energy consumption, the proposed collaborative sensing framework is able to preserve the energy consumption of IoT devices by nearly 50% for continuous data acquisition tasks.
Funder
National Major Program for Technological Innovation 2030-New Generation Artificial Intelligence
Natural Science Foundation of China
The Central Universities
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Networks and Communications
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Cited by
5 articles.
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