Adaptive soft sensor modeling of chemical processes based on an improved just‐in‐time learning and random mapping partial least squares
Ke Zhang,
Xiangrui Zhang
Abstract:The just‐in‐time learning‐based partial least squares (JIT‐PLS) has been extensively applied to adaptive soft sensor modeling of complex nonlinear processes. However, it still has the problems of unreasonable relevant samples selection and unsatisfactory local modeling. Aiming at these problems, this paper proposes an improved just‐in‐time learning‐based random mapping partial least squares (IJIT‐RMPLS), including an improved relevant samples selection strategy and a random mapping PLS (RMPLS) model. On the on… Show more
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