{"id":6436,"date":"2025-06-02T14:59:17","date_gmt":"2025-06-04T07:23:16","guid":{"rendered":"https:\/\/badgameshow.com\/steven\/?p=6436"},"modified":"2025-06-04T14:59:17","modified_gmt":"2025-06-04T07:23:16","slug":"%e4%ba%86%e8%a7%a3%e5%a6%82%e4%bd%95%e5%88%a9%e7%94%a8python%e4%b8%ad%e7%9a%84adxchannel%e6%8c%87%e6%a8%99%e9%80%b2%e8%a1%8c%e4%ba%a4%e6%98%93","status":"publish","type":"post","link":"https:\/\/badgameshow.com\/steven\/python\/%e4%ba%86%e8%a7%a3%e5%a6%82%e4%bd%95%e5%88%a9%e7%94%a8python%e4%b8%ad%e7%9a%84adxchannel%e6%8c%87%e6%a8%99%e9%80%b2%e8%a1%8c%e4%ba%a4%e6%98%93\/","title":{"rendered":"\u5229\u7528Python\u5be6\u73fe2025\u6700\u65b0\u7684\u5e73\u5747\u8da8\u5411\u6307\u6578\u901a\u9053(ADX Channel)\u4ea4\u6613\u6307\u6a19"},"content":{"rendered":"<p><meta name=\"keywords\" content=\"Python, \u5e73\u5747\u8da8\u5411\u6307\u6578\u901a\u9053, ADX Channel, \u4ea4\u6613\u6307\u6a19, \u4f7f\u7528\u6642\u6a5f, 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low.diff().abs()<\/p>\n<p>    pos_dm = (up_move.where((up_move > down_move) &#038; (up_move > 0)).fillna(0)).rolling(window=period).sum()<br \/>\n    neg_dm = (down_move.where((down_move > up_move) &#038; (down_move > 0)).fillna(0)).rolling(window=period).sum()<\/p>\n<p>    # \u8a08\u7b97ADX<br \/>\n    smoothed_tr = tr.rolling(window=period).sum()<br \/>\n    smoothed_pos_dm = pos_dm.rolling(window=period).sum()<br \/>\n    smoothed_neg_dm = neg_dm.rolling(window=period).sum()<\/p>\n<p>    # \u8a08\u7b97+DI, -DI\u548cADX<br \/>\n    plus_di = 100 * (smoothed_pos_dm \/ smoothed_tr)<br \/>\n    minus_di = 100 * (smoothed_neg_dm \/ smoothed_tr)<br \/>\n    adx = 100 * (pd.Series(abs(plus_di &#8211; minus_di) \/ (plus_di + minus_di)).rolling(window=period).mean())<\/p>\n<p>    return adx, plus_di, minus_di<\/p>\n<p># \u8a08\u7b97\u6307\u6a19<br \/>\nadx, plus_di, minus_di = calculate_adx(df)<\/p>\n<p># \u7e6a\u88fdADX Channel\u5716\u8868<br \/>\nplt.figure(figsize=(10, 6))<br 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