A=M=0, K=C=1, B=3, ν=0.5, Q=0.5Effect of varying parameter A. All other parameters are 1.Effect of varying parameter B. A = 0, all other parameters are 1.Effect of varying parameter C. A = 0, all other parameters are 1.Effect of varying parameter K. A = 0, all other parameters are 1.Effect of varying parameter Q. A = 0, all other parameters are 1.Effect of varying parameter . A = 0, all other parameters are 1.
The generalized logistic function or curve is an extension of the logistic or sigmoid functions. Originally developed for growth modelling, it allows for more flexible S-shaped curves. The function is sometimes named Richards's curve after F.J.Richards, who proposed the general form for the family of models in 1959.
A particular case of the generalised logistic function is:
which is the solution of the Richards's differential equation (RDE):
with initial condition
where
provided that and
The classical logistic differential equation is a particular case of the above equation, with , whereas the Gompertz curve can be recovered in the limit provided that:
In fact, for small it is
The RDE models many growth phenomena, arising in fields such as oncology and epidemiology.
When estimating parameters from data, it is often necessary to compute the partial derivatives of the logistic function with respect to parameters at a given data point (see[1]). For the case where ,
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Lei, Y. C.; Zhang, S. Y. (2004). "Features and Partial Derivatives of Bertalanffy–Richards Growth Model in Forestry". Nonlinear Analysis: Modelling and Control. 9 (1): 65–73. doi:10.15388/NA.2004.9.1.15171.