1. 程式人生 > >測繪程式設計試題集】 試題03

測繪程式設計試題集】 試題03

資料

300,21182.88,-7044.56,14639.48
600,21707.87,-6930.28,13906.68
900,22207.04,-6828.65,13147.66
1200,22679.16,-6738.66,12363.84
1500,23123.06,-6659.23,11556.71
1800,23537.69,-6589.21,10727.78
2100,23922.07,-6527.40,9878.61
2400,24275.33,-6472.54,9010.81
2700,24596.67,-6423.32,8126.00
3000,24885.42,-6378.40,7225.86
3300,25141.01,-6336.41,6312.08
3600,25362.96,-6295.93,5386.38
3900,25550.92,-6255.54,4450.51

問題

在這裡插入圖片描述 在這裡插入圖片描述 在這裡插入圖片描述

def read_m(path):
    #  所有資料
    m = []
    # x
    xlist = []
    # y
    ylist = []
    # z
    zlist = []
    # time
    time_list = []

    with open(path, 'r') as f:
        for i in f.readlines():
            aa = i.replace('\n', '').split(",")
            bb = [eval(a) for a in aa]
            m.
append(bb) time_list.append(bb[0]) xlist.append(bb[1]) ylist.append(bb[2]) zlist.append(bb[3]) return { "alldata": m, "time": time_list, "x": xlist, "y": ylist, "z": zlist, } XXX = None YYY = None def xpj
(): """ X平均值 :return: """ sum = 0 for i in range(XXX.__len__()): sum += XXX[i] return sum / XXX.__len__() def ypj(): """ Y 平均值 :return: """ sum = 0 for i in range(YYY.__len__()): sum += YYY[i] return sum / YYY.__len__() def sse(): """ 迴歸方程 :return: """ sum = 0 xa = xpj() ya = ypj() for i in range(XXX.__len__()): sum += (XXX[i] - xa) * (YYY[i] - ya) return sum def ssx(): """ 迴歸方程 :return: """ sum = 0 xa = xpj() for i in range(XXX.__len__()): sum += (XXX[i] - xa) * (XXX[i] - xa) return sum def getbeta1(): """ bate1 :return: """ bbeta = sse() / ssx() return bbeta def getbeta0(): """ beta0 :return: """ return ypj() - getbeta1() * xpj() def huiguixishu(x, y): """ 迴歸係數 :param x: :param y: :return: """ global XXX global YYY XXX = x YYY = y beta1 = getbeta1() beta0 = getbeta0() return [beta0, beta1] def predic(x, beta0, beta1): """ 估計 :param x: :param beta0: :param beta1: :return: """ a = beta0 + beta1 * x return a if __name__ == '__main__': d = read_m("軌道檔案.txt") tm = d["time"] x = d["x"] y = d["y"] z = d["z"] print("========迴歸係數=========") a = huiguixishu(tm, x) b = huiguixishu(tm, y) c = huiguixishu(tm, z) print(a) print(b) print(c) print("========預測=========") guji_time = [4200,4500,4800] beta0_list = [a[0],b[0],c[0]] beta1_list = [a[1],b[1],c[1]] for i in range(guji_time.__len__()): x = predic(guji_time[i],beta0_list[0],beta1_list[0]) y = predic(guji_time[i],beta0_list[1],beta1_list[1]) z = predic(guji_time[i],beta0_list[2],beta1_list[2]) print(guji_time[i],format(x,'0.3f') ,format(y,'0.3f'),format(z,'0.3f'))

結果

========迴歸係數=========
[21146.959615384614, 1.2183738095238088]
[-7019.398461538461, 0.21143040293040288]
[15712.87576923077, -2.8401093406593407]
========預測=========
4200 26264.130 -6131.391 3784.417
4500 26629.642 -6067.962 2932.384
4800 26995.154 -6004.533 2080.351