A Novel Filtering Based Recursive Estimation Algorithm for Box-Jenkins Systems

Author(s):  
Xuehai Wang ◽  
Fang Zhu
2021 ◽  
Vol 11 (16) ◽  
pp. 7451
Author(s):  
Christian Feudjio Letchindjio ◽  
Jesús Zamudio Lara ◽  
Laurent Dewasme ◽  
Héctor Hernández Escoto ◽  
Alain Vande Wouwer

This paper investigates the application of adaptive slope-seeking strategies to dual-input single output dynamic processes. While the classical objective of extremum seeking control is to drive a process performance index to its optimum, this paper also considers slope seeking, which allows driving the performance index to a desired level (which is thus sub-optimal). Moreover, the consideration of more than one input signal allows minimizing the input energy thanks to the degrees of freedom offered by the additional inputs. The actual process is assumed to be locally approachable by a Hammerstein model, combining a nonlinear static map with a linear dynamic model. The proposed strategy is based on the interplay of three components: (i) a recursive estimation algorithm providing the model parameters and the performance index gradient, (ii) a slope generator using the static map parameter estimates to convert the performance index setpoint into slope setpoints, and (iii) an adaptive controller driving the process to the desired setpoint. The performance of the slope strategy is assessed in simulation in an application example related to lipid productivity optimization in continuous cultures of micro-algae by acting on both the incident light intensity and the dilution rate. It is also validated in experimental studies where biomass production in a continuous photo-bioreactor is targeted.


2010 ◽  
Vol 61 (3) ◽  
pp. 171-176 ◽  
Author(s):  
Amir Rastegarnia ◽  
Mohammad Tinati ◽  
Behzad Mozaffari ◽  
Azam Khalili

A Localized Recursive Estimation Algorithm for Vector Parameter Estimation in AD HOC Wireless Sensor NetworksIn this paper a localized recursive estimation scheme for vector parameter estimation in ad hoc wireless sensor networks (WSNs) is proposed. In our setup, each sensor has a noisy measurement from a fixed, but unknown vector parameter. The classical best linear unbiased estimator (BLUE) cannot be implemented in a practical ad hoc sensor network due to its requirement to transmit all real-valued messages to a fusion center (FC). To address this problem, in this paper we propose a recursive estimation algorithm which is based on progressive cooperation between sensors. In our proposed algorithm, each sensor computes an estimate of the unknown parameter using its own local data and some information from prior sensor. The computed estimate is delivered to the next sensor and so on. The last sensor delivers the computed estimate of the unknown parameter to the destination. Our mathematical analysis shows that the proposed recursive algorithm is an unbiased estimator of the unknown parameter and asymptotically approaches to the estimate that would be obtained if each sensor had access to the information across the entire network. Also, the simulation examples are used to show the performance of the proposed scheme.


Author(s):  
S. NAKAMORI ◽  
R. CABALLERO-AGUILA ◽  
A. HERMOSO-CARAZO ◽  
J. D. JIMENEZ-LOPEZ ◽  
J. LINARES-PEREZ

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