[1] WANG, T. and ZHU, Z. W. A new type of nonlinear hysteretic model for magnetorheological elastomer and its application. Materials Letters, 301, 130176(2021) [2] GOODARZ, A. Stochastic earthquake response of structures on sliding foundation. International Journal of Engineering Science, 21(2), 93–102(1983) [3] SALVATORE, A., CARBONI, B., CHEN, L. Q., and LACARBONARA, W. Nonlinear dynamic response of a wire rope isolator: experiment, identification and validation. Engineering Structures, 238, 112121(2021) [4] KITAMURA, K. Shape memory properties of Ti-Ni shape memory alloy/shape memory polymer composites using additive manufacturing. Materials Science Forum, 1016, 697–701(2021) [5] YE, J., YAN, G., LIU, R., XUE, P., and WANG, D. Hysteretic behavior of replaceable steel plate damper for prefabricated joint with earthquake resilience. Journal of Building Engineering, 46, 103714(2022) [6] ISMAIL, M., IKHOUANE, F., and RODELLAR, J. The hysteresis Bouc-Wen model, a survey. Archives of Computational Methods in Engineering, 16(2), 161–188(2009) [7] JIANG, K., WEN, J., HAN, Q., and DU, X. Identification of nonlinear hysteretic systems using sequence model-based optimization. Structural Control and Health Monitoring, 27(4), 2500(2020) [8] YING, Z. Response analysis of randomly excited nonlinear systems with symmetric weighting preisach hysteresis. Acta Mechanica Sinica, 19(4), 365–370(2003) [9] YING, Z. G., ZHU, W. Q., NI, Y. Q., and KO, J. M. Random response of Preisach hysteretic systems. Journal of Sound and Vibration, 254(1), 37–49(2002) [10] IWAN, W. D. and LUTES, L. D. Response of the bilinear hysteretic system to stationary random excitation. The Journal of the Acoustical Society of America, 43(3), 545–552(1968) [11] CAUGHEY, T. K. Random excitation of a system with bilinear hysteresis. Journal of Applied Mechanics, 27(4), 649–652(1960) [12] WEN, Y. K. Method for random vibration of hysteretic systems. Journal of the Engineering Mechanics Division, 102(2), 249–263(1976) [13] LIU, J., CHEN, L., and SUN, J. Q. The closed-form solution of steady state response of hysteretic system under stochastic excitation. Chinese Journal of Theoretical and Applied Mechanics, 49(3), 685–692(2017) [14] GUO, S. S., SHI, Q., and XU, Z. D. Stochastic responses of nonlinear systems to nonstationary non-Gaussian excitations. Mechanical Systems and Signal Processing, 144, 106898(2020) [15] LIU, W., GUO, Z., and YIN, X. Stochastic averaging for SDOF strongly nonlinear system under combined harmonic and Poisson white noise excitations. International Journal of Non-Linear Mechanics, 126, 103574(2020) [16] VASTA, M. and LUONGO, A. Dynamic analysis of linear and nonlinear oscillations of a beam under axial and transversal random Poisson pulses. Nonlinear Dynamics, 36(2-4), 421–435(2004) [17] YANG, G., XU, W., HUANG, D., and HAO, M. Stochastic responses of lightly nonlinear vibroimpact system with inelastic impact subjected to external Poisson white noise excitation. Mathematical Problems in Engineering, 2018, 1–12(2018) [18] ZHU, H. T., ER, G. K., IU, V. P., and KOU, K. P. Probability density function solution of nonlinear oscillators subjected to multiplicative Poisson pulse excitation on velocity. Journal of Applied Mechanics, 77(3), 1–7(2010) [19] IWANKIEWICZ, R. and NIELSEN, S. R. K. Dynamic response of hysteretic systems to Poissondistributed pulse trains. Probabilistic Engineering Mechanics, 7(3), 135–148(1992) [20] ZENG, Y. and LI, G. Stationary response of bilinear hysteretic system driven by Poisson white noise. Probabilistic Engineering Mechanics, 33, 135–143(2013) [21] LAGARIS, I. E., LIKAS, A. C., and PAPAGEORGIOU, D. G. Neural-network methods for boundary value problems with irregular boundaries. IEEE Transactions on Neural Networks, 11(5), 1041–1049(2000) [22] LAGARIS, I. E., LIKAS, A., and FOTIADIS, D. I. Artificial neural networks for solving ordinary and partial differential equations. IEEE Transactions on Neural Networks, 9(5), 987–1000(1998) [23] MEADE, A. J. and FERN, A. A. Solution of nonlinear ordinary differential equations by feedforward neural networks. Mathematical & Computer Modelling, 20(12), 1–25(1994) [24] LU, L., MENG, X., MAO, Z., and KARNIADAKIS, G. E. DeepXDE: a deep learning library for solving differential equations. SIAM Review, 63(1), 208–228(2021) [25] RAISSI, M., PERDIKARIS, P., and KARNIADAKIS, G. E. Physics-informed neural networks: a deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations. Journal of Computational Physics, 378, 686–707(2019) [26] PISCOPO, M. L., SPANNOWSKY, M., and WAITE, P. Solving differential equations with neural networks: applications to the calculation of cosmological phase transitions. Physical Review D, 100(1), 016002(2019) [27] RAISSI, M. and KARNIADAKIS, G. E. Hidden physics models: machine learning of nonlinear partial differential equations. Journal of Computational Physics, 357, 125–141(2018) [28] GAO, H., ZAHR, M. J., and WANG, J. X. Physics-informed graph neural Galerkin networks: a unified framework for solving PDE-governed forward and inverse problems. Computer Methods in Applied Mechanics and Engineering, 390, 114502(2022) [29] WEINAN, E., HAN, J., and JENTZEN, A. Algorithms for solving high dimensional PDEs: from nonlinear Monte Carlo to machine learning. Nonlinearity, 35(1), 278(2021) [30] HAN, J., JENTZEN, A., and WEINAN, E. Solving high-dimensional partial differential equations using deep learning. Proceedings of the National Academy of Sciences, 115(34), 8505–8510(2018) [31] WEINAN, E. and YU, B. The deep Ritz method: a deep learning-based numerical algorithm for solving variational problems. Communications in Mathematics & Statistics, 6(1), 1–12(2018) [32] ZANG, Y., BAO, G., YE, X., and ZHOU, H. Weak adversarial networks for high-dimensional partial differential equations. Journal of Computational Physics, 411, 109409(2019) [33] KANSA, E. J. Multiquadrics — a scattered data approximation scheme with applications to computational fluid-dynamics — I surface approximations and partial derivative estimates. Computers & Mathematics with Applications, 19(8), 127–145(1990) [34] KANSA, E. J. Multiquadrics — a scattered data approximation scheme with applications to computational fluid-dynamics — II solutions to parabolic, hyperbolic and elliptic partial differential equations. Computers & Mathematics with Applications, 19(8), 147–161(1990) [35] DEHGHAN, M. and MOHAMMADI, V. The numerical solution of Fokker-Planck equation with radial basis functions (RBFs) based on the meshless technique of Kansas approach and Galerkin method. Engineering Analysis with Boundary Elements, 47, 38–63(2014) [36] GORBACHENKO, V. I. and ZHUKOV, M. V. Solving boundary value problems of mathematical physics using radial basis function networks. Computational Mathematics and Mathematical Physics, 57(1), 145–155(2017) [37] KAZEM, S., RAD, J. A., and PARAND, K. Radial basis functions methods for solving FokkerPlanck equation. Engineering Analysis with Boundary Elements, 36(2), 181–189(2012) [38] MIRZAEE, F., REZAEI, S., and SAMADYAR, N. Application of combination schemes based on radial basis functions and finite difference to solve stochastic coupled nonlinear time fractional sine-Gordon equations. Computational and Applied Mathematics, 41(1), 1–16(2022) [39] WANG, X., JIANG, J., HONG, L., and SUN, J. Q. Random vibration analysis with radial basis function neural networks. International Journal of Dynamics and Control, 10, 1385–1394(2022) [40] WANG, X., JIANG, J., HONG, L., and SUN, J. Q. First-passage problem in random vibrations with radial basis function neural networks. Journal of Vibration and Acoustics, 44, 051014(2022) [41] ALQEZWEENI, M. M., GORBACHENKO, V. I., ZHUKOV, M. V., and JAAFAR, M. S. Efficient solving of boundary value problems using radial basis function networks learned by trust region method. International Journal of Mathematics and Mathematical Sciences, 2018, 1–4(2018) [42] YE, L., LU, X., MA, Q., CHENG, G., SONG, S., MIAO, Z., and PAN, P. Study on the influence of post-yielding stiffness to seismic response of building structures. Proceedings of the 14th World Conference on Earthquake Engineering, Beijing, China (2008) [43] JIA, W. T. and ZHU, W. Q. Stochastic averaging of quasi-partially integrable Hamiltonian systems under combined Gaussian and Poisson white noise excitations. Physica A: Statistical Mechanics and Its Applications, 398, 125–144(2014) |