This paper proposes a weighted two-box model to solve the behavior modeling and distortion compensation problem of broadband RF power amplifier. The model,including the memoryless sub-model and memory sub-model,is used to model the static nonlinear and dynamic nonlinear of broadband power amplifiers. First of all,the input signal amplitude is compressed in weighted memoryless sub-model,which can effectively reduce the fitting error of the static distortion model. And the output value of the sub model is decompressed to ensure the saturation driving performance of the amplifier. Sec-ond,the weight memory sub-model is constructed,and is used to adjust the low and high power dynamic distortion sub mod-el dynamically based on the weight function related to signal amplitude. The experimental results show that under different signal driving conditions,the proposed method can reduce the computational complexity while maintain better modeling ac-curacy and distortion compensation capability.%针对宽带功放行为建模和畸变补偿问题,提出了一种新的权重双盒模型.该模型采用无记忆子模型和记忆子模型权重级联的方法分别对宽带功放的静态非线性和动态非线性进行级联建模.首先,利用无记忆子模型对输入信号幅值进行压缩,降低静态畸变部分模型的拟合误差,并在子模型输出端进行解权值,保证功放的饱和驱动特性;接着,构建权重记忆子模型,利用信号幅值相关的权值函数动态的调整高低功率动态畸变子模型的权重比例.实验结果表明,在不同信号驱动情况下,本文方法在降低计算复杂度的同时,保持了更好的建模精度和畸变补偿能力.
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