4.6 Article

An Efficient Distributed Elliptic Positioning for Underground Remote Sensing

Journal

ELECTRONICS
Volume 10, Issue 16, Pages -

Publisher

MDPI
DOI: 10.3390/electronics10162025

Keywords

sequential localization; monitoring; water contamination; elliptic measurement; remote sensing

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This research introduces a new short-range sequential localization approach to reduce signal transmission power, utilizing multiple wireless sensors and a few anchors for efficient positioning. The method employs time delay elliptic and frequency range techniques to achieve Cramer-Rao Lower Bound performance level, and the estimated positions can be used as MLE initializations for higher accuracy.
Remote surveying of unknown bound geometries, such as the mapping of underground water supplies and tunnels, remains a challenging task. The obstacles and absorption in media make the long-distance telecommunication and localization process inefficient due to mobile sensors' power limitations. This work develops a new short-range sequential localization approach to reduce the required amount of signal transmission power. The developed algorithm is based on a sequential localization process that can utilize a multitude of randomly distributed wireless sensors while only employing several anchors in the process. Time delay elliptic and frequency range techniques are employed in developing the proposed algebraic closed-form solution. The proposed method is highly effective as it reaches the Cramer-Rao Lower Bound performance level. The estimated positions can act as initializations for the iterative Maximum Likelihood Estimator (MLE) via the Taylor series linearization to acquire even higher positioning accuracy as needed. By reducing the need for high power at the transmit modules in the sensors, the developed localization approach can be used to design a compact sensor with low power consumption and greater longevity that can be utilized to explore unknown bounded geometries for life-long efficient observation mapping.

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