loading page

Optimizing ion transport in a multi-reflection time-of-flight mass spectrograph by a modified Nelder--Mead simplex algorithm
  • Zhengxu Huang,
  • Shuxiong Yan,
  • M. Rosenbusch
Zhengxu Huang
Jinan University

Corresponding Author:[email protected]

Author Profile
Shuxiong Yan
Jinan University
Author Profile
M. Rosenbusch
Institute of Particle and Nuclear Studies (IPNS
Author Profile

Abstract

RATIONALE: The multi-reflection time-of-flight mass spectrograph (MRTOF-MS) is a complex nonlinear system with dozens of variables that are impossible to determine in theory. Numerical analysis is the only method to determine a solution. Therefore, a numerical simulation is applied with a modified Nelder–Mead simplex (MNMS) algorithm for optimizing voltage configurations. METHODS: Ion trajectories for injection and confinement are simulated using the software SIMION 8.1. The goal of optimization is to find a more suitable configuration for the electric field. This task becomes more challenging as the number of variables, the complexity of the objective function, and the accuracy of the variable intervals increase. A simplex search algorithm was used to perform the optimization process. We modified the searching algorithm by incorporating a variable transformation to ensure that the variables have smooth boundaries. Additionally, we introduced a dedicated benchmark to facilitate global searches. RESULTS: By iteratively using the MNMS algorithm, a total of eight electrodes have been optimized, resulting in a smaller beam size and more efficient ion transport. CONCLUSIONS: The MNMS algorithm is effectively for optimizing nonlinear MRTOF-MS system. It improves the adaptability and globality of the original algorithm, making it applicable for the numerical analysis of complex mass spectrometry systems and problems in engineering.
21 Aug 2023Submitted to Rapid Communications in Mass Spectrometry
21 Aug 2023Submission Checks Completed
21 Aug 2023Assigned to Editor
21 Aug 2023Review(s) Completed, Editorial Evaluation Pending
27 Aug 2023Reviewer(s) Assigned
15 Sep 2023Editorial Decision: Revise Major