posted on 2021-10-14, 22:14authored byPeng Wei, Han-Xiong Li
Many
industrial processes are distributed parameter systems that
require complete spatial information for decisions and control. For
modeling unknown distributed parameter systems (DPSs), a spatial construction
method is proposed to preserve the spatial information between sensing
locations. With the help of the spatial construction method, continuous
spatial basis functions (SBFs) can be constructed to capture the spatial
information lost in the time-space separation. The corresponding temporal
dynamics can be identified using the generalized radial basis function
network with the orthogonal least-squares (OLS) algorithm. After the
time-space synthesis, the constructed spatiotemporal model can provide
continuous modeling in the spatial domain with satisfactory performance.
Convergence analysis proves that the proposed method can guarantee
bounded errors. Finally, the experiments on a linear thermal process
and a nonlinear catalytic process validate the effectiveness of the
proposed method under limited sensors and its robustness when one
of the sensors fails.