HPLC is a popular analytical method in the pharmaceutical, cosmetic, food, and beverage industries. To develop a novel HPLC method that satisfies a given set of criteria, the researcher must do a lot of experiments and adjust many operation parameters. Modeling and simulation are powerful tools to reduce the number of experiments by predicting the experimental outcome. There are many ways to simulate HPLC; two main methodologies are data-driven methods and theory-based ones. The data-driven methods need a massive amount of experimental data. In the studies [
1,
2,
3,
4,
5], regression tools such as artificial neural networks (ANN), adaptive neuro-fuzzy inference systems (ANFIS), quantitative structure-retention relationships (QSRR), and multiple linear regression (MLR) were employed to interpret the data. In the age of continuously progressing computer science, these data-based methods will have a huge advantage. They can even simulate the gradient elution mode [
2,
6] which is extremely complicated when using the other method. However, not everyone can perform a lot of experiments or have access to a comprehensive database. Furthermore, most of the studies can only predict the retention behavior of the analytes, and some of them can calculate the peak width at best. The other approach is using theory and laws to set up equations that describe the operation of the equipment. These models, if well-established, will be very powerful at predicting results and only need a few experimental data to calibrate some parameters. The most relevant among these models are the rate model, plate model, and equilibrium-dispersive model [
7]. Plate models are based on the idea that the column consists of many theoretical plates stacked upon each other [
8,
9,
10,
11]. This theory can be used to establish a set of n equations or an iterative algorithm to calculate the concentration of the analyte in the mobile phase and stationary phase. However, most of the plate models are simple and cannot simulate competitive adsorption when injecting a mixture of analytes [
12]. The rate models are the comprehensive models for simulating chromatography, which take into account the effect of the mass transfer resistance. Each type of rate model has a different degree of complexity [
12]. The rate models are often expressed by two equations: one demonstrates the concentration of the analyte in the mobile phase and the other describes the mass transfer between the mobile phase and the surface of the stationary phase. On the other hand, equilibrium-dispersive models are the simplified version of rate models, which neglect the effect of the mass transfer resistance [
13,
14]. The equilibrium-dispersive models are relevant for simulating the high-efficiency column with minimal mass transfer resistance. In this work, equilibrium is chosen for its simplicity and the high-efficiency nature of the HPLC process. The numerical methods for simulating partial differential equations can be divided into two major types: the finite difference method, and the finite element method. The finite element methods derive numerical solutions for the partial differential equation by calculating the integration [
12]. These methods work the best in the case of sudden changes, which are common in mechanical problems. However, the finite element methods do not show sufficient accuracy in solving the problems that feature fluid flow. On the other hand, the finite difference methods (FDM) calculate the derivative, so they are more suitable for cases with gradual changes. However, there are not many studies reporting the application of FDM in chromatography modeling. Only few studies used FDM to simulate the partial differential equation with various degrees of success [
15,
16,
17,
18]. In all these works, only the first-order scheme is applied. Because of the high dispersion of the first-order scheme, the diffusion term has to be removed. The increments in time and space have to be determined from the diffusion coefficient so that the diffusion is approximated by the dispersion of the numerical scheme. This approach has several drawbacks. First, the physical meaning is not truly reflected by the numerical method. Second, the shape of the peaks sometimes cannot be precisely reproduced. For example, the study from [
16] had to adjust the time and space steps by fitting with the result from other methods to obtain a better peak shape. Third, this method is challenging to extend to a multicomponent system because of the variation of the diffusion coefficient. Moreover, the accuracy of these low-order schemes is quite low. This shortcoming was offset by using extremely small temporal and spatial increments, which dramatically prolonged the calculation time. A potential approach to address the issues is to use a higher-order scheme, especially with the constant increase of computer power. Although using a high-order scheme to solve PDE has existed for many years, the application in chromatographic processes is not yet reported. The applicability of the FDM with a high-order scheme to reproduce the peak is still a question. Therefore, the investigation of a high-order-scheme FDM to model the chromatographic processes is worth conducting. In this work, fourth-order central difference schemes and fifth-order upwind schemes are employed to simulate the partial differential equation describing non-linear chromatography with high accuracy, exactly reproducing its peak shape and fast calculation time.