ADC采样滤波算法利用卡尔曼滤波算法详解

1 ADC采样模型

假设ADC采样的值已经为稳定状态,设 k + 1 k+1 时刻ADC采样值为 X k + 1 X_{k+1} ,则 k k 时刻ADC采样值为 X k X_k ,假设 k + 1 k+1 时刻的采样值为 Z k + 1 Z_{k+1} ,则有:
{ X k + 1 = X k + δ 1 , δ 1 为系统噪声 Z k + 1 = X k + 1 + δ 2 , δ 2 为测量噪声 \begin{cases} X_{k+1} = X_k+\delta_1, & \text{$\delta_1$为系统噪声}\\Z_{k+1}=X_{k+1} +\delta_2, & \text{$\delta_2$为测量噪声} \end{cases}

2 卡尔曼滤波算法

我们知道卡尔曼滤波算法的公式如下:
这里写图片描述

由于相关系数都为1,于是可以得出如下公式:
{ P 0 , 0 = 0 P k , k 1 = P k 1 , k 1 + Q G k = P k , k 1 / ( P k , k 1 + R ) P k , k = ( 1 G k ) P k , k 1 x 0 0 = 0 x k k 1 = x k 1 k 1 x k k = x k k 1 + G k ( Z k x k k 1 ) \begin{cases} P_{0,0} = 0 \\P_{k,k-1}=P_{k-1,k-1} +Q \\ G_k = P_{k,k-1}/(P_{k,k-1}+R) \\ P_{k,k}=(1-G_k)P_{k,k-1} \\ x_{0|0} = 0 \\ x_{k|k-1} = x_{k-1|k-1} \\ x_{k|k}=x_{k|k-1}+G_k(Z_k-x_{k|k-1}) \end{cases}

3 C语言代码

用C实现的代码如下:

unsigned long kalman_filter(unsigned long ADC_Value)
{
    float x_k1_k1,x_k_k1;
    static float ADC_OLD_Value;
    float Z_k;
    static float P_k1_k1;

    static float Q = 0.0001;
    static float R = 0.005;
    static float Kg = 0;
    static float P_k_k1 = 1;

    float kalman_adc;
    static float kalman_adc_old=0;
    Z_k = ADC_Value;
    x_k1_k1 = kalman_adc_old;

    x_k_k1 = x_k1_k1;
    P_k_k1 = P_k1_k1 + Q;

    Kg = P_k_k1/(P_k_k1 + R);

    kalman_adc = x_k_k1 + Kg * (Z_k - kalman_adc_old);
    P_k1_k1 = (1 - Kg)*P_k_k1;
    P_k_k1 = P_k1_k1;

    ADC_OLD_Value = ADC_Value;
    kalman_adc_old = kalman_adc;

    return kalman_adc;
}

4 如何优化

用以上的代码实现的滤波算法,通常要么滞后严重,要么滤波效果不明显,在这里给出两种优化方案。
方案一:在采样值与优化值相差大于某值时采用一阶滞后滤波算法,小于该值时采用卡尔曼滤波算法;
方案二:比较一段时间内的ADC采样值与优化值差值,若一直处于某个范围如(6~30),采用一阶滞后滤波算法,反之采用卡尔曼滤波算法。
以下代码是方案一的优化代码,其优化效果可见我另一篇博文https://blog.csdn.net/moge19/article/details/80915432:

unsigned long kalman_filter(unsigned long ADC_Value)
{
float x_k1_k1,x_k_k1;
static float ADC_OLD_Value;
float Z_k;
static float P_k1_k1;

static float Q = 0.0001;
static float R = 5;
static float Kg = 0;
static float P_k_k1 = 1;

float kalman_adc;
static float kalman_adc_old=0;

Z_k = ADC_Value;

if (abs(kalman_adc_old-ADC_Value)>=10)
{ 
    x_k1_k1= ADC_Value*0.382 + kalman_adc_old*0.618;
}else
{
    x_k1_k1 = kalman_adc_old;
}
x_k_k1 = x_k1_k1;
P_k_k1 = P_k1_k1 + Q;

Kg = P_k_k1/(P_k_k1 + R);

kalman_adc = x_k_k1 + Kg * (Z_k - kalman_adc_old);
P_k1_k1 = (1 - Kg)*P_k_k1;
P_k_k1 = P_k1_k1;

ADC_OLD_Value = ADC_Value;
kalman_adc_old = kalman_adc;

return get_int_num(kalman_adc);
}

用python实现并对其进行仿真,详见博文
https://blog.csdn.net/moge19/article/details/82531119
若有错误望方家指正

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转载自blog.csdn.net/moge19/article/details/81750731