2016 American Control Conference (ACC) 2016
DOI: 10.1109/acc.2016.7525337
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Distributed and decentralized state estimation of Fractional order systems

Abstract: Abstract-This paper is about the decentralization and distribution of a Kalman filter for fractional order systems. A fractional order discrete state space for a global system is introduced and divided into different submodules. The distribution of the model and of the state estimation algorithm into submodules leads to small and scalable units, which do not need a central processing node. Each submodule performs its computation locally. All information required by other nodes is communicated between the nodes… Show more

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Cited by 12 publications
(18 citation statements)
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“…(ii) Their ability to predict more accurately the dynamics of the system that is being modelled. (iii) They make it possible to obtain simplified system models with just a few physically motivated parameters [14] and [15]. The main contribution of this paper is on the use of the continuous-time fractional-order MOESP system identification algorithm to help identify massive MIMO frequency-selective wireless channels.…”
Section: Related Work and Paper Contributionmentioning
confidence: 99%
“…(ii) Their ability to predict more accurately the dynamics of the system that is being modelled. (iii) They make it possible to obtain simplified system models with just a few physically motivated parameters [14] and [15]. The main contribution of this paper is on the use of the continuous-time fractional-order MOESP system identification algorithm to help identify massive MIMO frequency-selective wireless channels.…”
Section: Related Work and Paper Contributionmentioning
confidence: 99%
“…Therefore, we consider a maximum number l of past values of x which is called short memory principle (SMP) [25,27]. The fractional, time-variant, and discrete-time state-space representation can be obtained from (2) following [23,28] whereby index k denotes the current time step t k in…”
Section: Fractional Calculusmentioning
confidence: 99%
“…Such distributed filters have been introduced, e.g. in [21,22] and have been extended for fractional models in [23]. A special case of a distributed system, using a hierarchical arrangement of subsystems, is a cascaded system.…”
Section: Introductionmentioning
confidence: 99%
“…The decentralization and distribution of the Kalman filter has been presented, for example in [9]- [11] for integer order systems and in [12] for fractional order systems. However, the distribution scheme can be complicated and laborious for some system classes, because the choice of appropriate transformation matrices and the implementation of an additional fusion step can be ambiguous and complex.…”
Section: B Distributed and Cascaded Systemsmentioning
confidence: 99%
“…It can be seen in the equations that past estimatesx j will not be updated when new data u k or y k with j < k are obtained. Therefore, the FKF shown in (12) to (19) is a suboptimal state estimation algorithm. An algorithm which also updates and estimates past states is presented in [19].…”
Section: Fractional Kalman Filtermentioning
confidence: 99%