商品情報にスキップ
1 1

Optimal Estimation Method of Temporal Odor Concentration Profile for Plume Tracking in Dynamic Turbulent Environment

Optimal Estimation Method of Temporal Odor Concentration Profile for Plume Tracking in Dynamic Turbulent Environment

通常価格 ¥770 JPY
通常価格 セール価格 ¥770 JPY
セール 売り切れ
税込

カテゴリ: 論文誌(論文単位)

グループ名: 【E】センサ・マイクロマシン部門

発行日: 2018/01/01

タイトル(英語): Optimal Estimation Method of Temporal Odor Concentration Profile for Plume Tracking in Dynamic Turbulent Environment

著者名: Muis Muhtadi (Tokyo Institute of Technology), Takamichi Nakamoto (Tokyo Institute of Technology)

著者名(英語): Muis Muhtadi (Tokyo Institute of Technology), Takamichi Nakamoto (Tokyo Institute of Technology)

キーワード: Odor sensor,Plume tracking,Turbulent airflow,Odor concentration trend,Computational Fluid Dynamics

要約(英語): Tracking a dynamic odor plume to the odor source in a real world environment using a chemical sensor is not a trivial task. In general, odor distribution in the real world is temporally and spatially fluctuated in a random manner owing to turbulent airflow. Therefore, evaluating a tracking strategy in a real world environment presents a certain difficulty in setting up a consistent environment for repetitive testing. This paper presents a simulation framework for the development and evaluation of a tracking strategy in a consistent virtual environment. A dynamic turbulent environment model with an odor source was modeled using Computational Fluid Dynamics (CFD) software, and the resulting data were used for a plume tracking simulation. This paper addresses the problem of estimating the trend of a fluctuating odor concentration for odor plume tracking. An estimation method for the odor concentration trend based on a regression was compared with the one based on an adaptive threshold. Each method was embedded into a chemotaxis-anemotaxis based plume tracking strategy to localize the source. The performances of the tracking strategy employing these different methods were compared. In addition, data smoothing was also examined to improve the effectiveness of the estimation methods. The investigation shows that the tracking strategy employing the combined smoothing-regression trend estimation has the highest success rate and minimum average time performance compared to the other tested methods. This paper also shows that selection of the key parameter of the method affects the tracking performance.

本誌: 電気学会論文誌E(センサ・マイクロマシン部門誌) Vol.138 No.1 (2018) 特集:センサ・マイクロマシン英文特集号

本誌掲載ページ: 15-22 p

原稿種別: 論文/英語

電子版へのリンク: https://www.jstage.jst.go.jp/article/ieejsmas/138/1/138_15/_article/-char/ja/

販売タイプ
書籍サイズ
ページ数
詳細を表示する