Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Synthesis analysis for multi-UAVs formation anomaly detection

View through CrossRef
Purpose The purpose of this paper is to deal with the anomaly detection problem in multi-unmanned aerial vehicles (UAVs) formation that can be transformed to identify some unknown parameters; a more general nonlinear dynamical model for each UAV is considered to include two terms. Due to an unknown parameter corresponding to the normal or abnormal state for each UAV, the bias-compensated approach is proposed to obtain the unbiased parameter estimation. Meanwhile, the biased error and accuracy analysis are also given in case of strict statistical description of the uncertainty or white noise. To relax this strict statistical description on external noise, an analytic center approach is proposed to identify the unknown parameters in presence of bounded noise, such that two inner and outer ellipsoidal approximations are constructed to include the membership set. To be precise, this paper is regarded as one extension and summary for the author’s previous research on the anomaly detection in multi-UAV formation. Finally, one simulation example is given to confirm the theoretical results. Design/methodology/approach Firstly, one extended nonlinear relation is constructed to embody the mutual relationship of UAVs. Secondly, to obtain the unbiased parameter estimations, the bias-compensated approach is applied to achieve it under the condition of white noise. Thirdly, in case of unknown but bounded noise, an analytic center approach is proposed to deal with this special case. Without loss of generality, the author thinks this paper can be used as one extension and summary for research on multi-UAVs formation anomaly detection. Findings An anomaly detection problem in multi-UAVs formation can be transformed into a problem of nonlinear system identification, and in modeling the nonlinear dynamical model for each UAV, two terms are considered simultaneously to embody the mutual relationships with other nearest UAV. Originality/value To the best knowledge of the authors, this problem of the anomaly detection problem in multi-UAVs formation is proposed by the authors’ previous work, and the problem of multi-UAVs formation anomaly detection can be transferred into one problem of parameter identification. In case of unknown but bounded noise, an analytic center approach is proposed to identify the unknown parameters, which correspond to achieve the goal of the anomaly detection.
Title: Synthesis analysis for multi-UAVs formation anomaly detection
Description:
Purpose The purpose of this paper is to deal with the anomaly detection problem in multi-unmanned aerial vehicles (UAVs) formation that can be transformed to identify some unknown parameters; a more general nonlinear dynamical model for each UAV is considered to include two terms.
Due to an unknown parameter corresponding to the normal or abnormal state for each UAV, the bias-compensated approach is proposed to obtain the unbiased parameter estimation.
Meanwhile, the biased error and accuracy analysis are also given in case of strict statistical description of the uncertainty or white noise.
To relax this strict statistical description on external noise, an analytic center approach is proposed to identify the unknown parameters in presence of bounded noise, such that two inner and outer ellipsoidal approximations are constructed to include the membership set.
To be precise, this paper is regarded as one extension and summary for the author’s previous research on the anomaly detection in multi-UAV formation.
Finally, one simulation example is given to confirm the theoretical results.
Design/methodology/approach Firstly, one extended nonlinear relation is constructed to embody the mutual relationship of UAVs.
Secondly, to obtain the unbiased parameter estimations, the bias-compensated approach is applied to achieve it under the condition of white noise.
Thirdly, in case of unknown but bounded noise, an analytic center approach is proposed to deal with this special case.
Without loss of generality, the author thinks this paper can be used as one extension and summary for research on multi-UAVs formation anomaly detection.
Findings An anomaly detection problem in multi-UAVs formation can be transformed into a problem of nonlinear system identification, and in modeling the nonlinear dynamical model for each UAV, two terms are considered simultaneously to embody the mutual relationships with other nearest UAV.
Originality/value To the best knowledge of the authors, this problem of the anomaly detection problem in multi-UAVs formation is proposed by the authors’ previous work, and the problem of multi-UAVs formation anomaly detection can be transferred into one problem of parameter identification.
In case of unknown but bounded noise, an analytic center approach is proposed to identify the unknown parameters, which correspond to achieve the goal of the anomaly detection.

Related Results

Journal of Smart Environments and Green Computing
Journal of Smart Environments and Green Computing
Aim: The rapid growth in the number of ground users over recent years has introduced the issues for a base station of providing more reliable connectivity and guaranteeing the reas...
A systematic survey: role of deep learning-based image anomaly detection in industrial inspection contexts
A systematic survey: role of deep learning-based image anomaly detection in industrial inspection contexts
Industrial automation is rapidly evolving, encompassing tasks from initial assembly to final product quality inspection. Accurate anomaly detection is crucial for ensuring the reli...
Models of Spatial Structures of Regional Multi‐element Geochemical Anomalies over Copper‐Polymetallic Orefields
Models of Spatial Structures of Regional Multi‐element Geochemical Anomalies over Copper‐Polymetallic Orefields
Abstract  Regional stream sediment surveys at a 1:200,000 scale reveal positive and negative regional multi‐element geochemical anomalies over medium to large copper‐polymetallic o...
RISE: Rolling-Inspired Scheduling for Emergency Tasks by Heterogeneous UAVs
RISE: Rolling-Inspired Scheduling for Emergency Tasks by Heterogeneous UAVs
The multiple unmanned aerial vehicles (UAVs) system is highly sought after in the fields of emergency rescue and intelligent transportation because of its strong perception and ext...
A local filtering-based energy-aware routing scheme in flying ad hoc networks
A local filtering-based energy-aware routing scheme in flying ad hoc networks
Abstract Flying ad hoc network (FANET) is a new technology, which creates a self-organized wireless network containing unmanned aerial vehicles (UAVs). In FANET, routing pr...
ToAM: A Task-oriented Authentication Model for UAVs Based on Blockchain
ToAM: A Task-oriented Authentication Model for UAVs Based on Blockchain
Abstract The pervasive collaboration of groups of UAVs has become vogue and popularized due to the reduced cost and widely adoption of these gadgets. It is believed that su...
ChaMTeC: CHAnnel Mixing and TEmporal Convolution Network for Time-Series Anomaly Detection
ChaMTeC: CHAnnel Mixing and TEmporal Convolution Network for Time-Series Anomaly Detection
Time-series anomaly detection is a critical task in various domains, including industrial control systems, where the early detection of unusual patterns can prevent system failures...
Track vibration sequence anomaly detection algorithm based on LSTM
Track vibration sequence anomaly detection algorithm based on LSTM
Subway structure monitoring obtains structure monitoring data in real time, and the obtained subway track vibration sequence exhibits obvious time series characteristics. Therefore...

Back to Top