Many problems in artillery systems can be described using partial differential equations (PDEs), and engineers need to repeatedly adjust the design object to meet the requirements of the design phase. Therefore, an efficient PDEs solver is needed during the design phase. PDEs solvers based on deep learning, especially neural operators, can meet this requirement. However, neural operators use multi-layer perceptrons (MLP) to project data features onto the output dimension, and MLP lack interpretability, often face overfitting and gradient vanishing, and lack scalability. Kolmogorov–Arnold Networks (KAN) has recently been introduced and is considered a potential alternative to MLP. Based on this, KAN are used to construct Fourier Kolmogorov–Arnold Neural Operators (FKANO) for solving forward and inverse problems in artillery engineering. Especially in the three tasks of approximation, partial differential equation solving, and building surrogate models, the proposed FKANO and FNO were compared. It was found that although robustness during the training process is lacking in FKANO, performance comparable to or even surpassing that of FNO can still be achieved. The proposed new neural network is believed to have the potential to advance the development of artillery engineering analysis.