Reaction-diffusion equations play important role in problems related to
population dynamics, developmental biology, and phase-transition. For
such equations, we propose a strong-form local (multiquadric) RBF method
that gives sparse well-conditioned differentiation matrices with reduced
computational cost and memory storage; thus, avoids solving dense
ill-conditioned system matrices, an inherited drawback of strong-form
global RBF methods if compared to the limitations of mesh-based methods.
After spatial discretization of the time-dependent PDE problem by sparse
differentiation matrices, the resultant system of ODEs can be stably
integrated in time via a high-order and high-quality ODE solver. The
proposed method is tested on two-dimensional Fisher-type equations for
its geometric flexibility, accuracy, and efficiency. Unlike the
mesh-based methods, the proposed local method works for arbitrary
scattered data points and is equally effective for problems over
non-rectangular domains. Some recommendations are also made for further
efficient implementation of the proposed local multiquadric method.