Transactions of Nonferrous Metals Society of China The Chinese Journal of Nonferrous Metals

您目前所在的位置:首頁(yè) - 期刊簡(jiǎn)介 - 詳細(xì)頁(yè)面

中國(guó)有色金屬學(xué)報(bào)

ZHONGGUO YOUSEJINSHU XUEBAO

第23卷    第12期    總第177期    2013年12月

[PDF全文下載]        

    

文章編號(hào):1004-0609(2013)12-3478-06
基于模糊支持向量機(jī)的硫浮選工況識(shí)別
何明芳,陽(yáng)春華,王曉麗,桂衛(wèi)華

(中南大學(xué) 信息科學(xué)與工程學(xué)院,長(zhǎng)沙 410083)

摘 要: 針對(duì)硫浮選泡沫圖像噪聲大、特征重要度差異顯著引起工況難以識(shí)別的問(wèn)題,提出基于模糊支持向量機(jī)的硫浮選工況識(shí)別方法。通過(guò)融合樣本模糊隸屬度和特征信息增益,獲取圖像視覺(jué)特征的特征重要度;并結(jié)合特征重要度矩陣,改進(jìn)模糊支持向量機(jī)的核函數(shù),進(jìn)而建立工況類別與圖像特征之間的關(guān)系模型,實(shí)現(xiàn)硫浮選工況識(shí)別。采用模糊隸屬度對(duì)噪聲賦予較小的權(quán)值,并結(jié)合模糊隸屬度來(lái)獲取特征重要度矩陣,可以減小噪聲樣本的影響,以揭示圖像特征重要度之間的差異,提高工況識(shí)別準(zhǔn)確性。鋅直接浸出冶煉硫浮選生產(chǎn)過(guò)程的實(shí)際測(cè)試數(shù)據(jù)驗(yàn)證了方法的有效性。

 

關(guān)鍵字: 硫浮選;特征重要度;模糊支持向量機(jī);工況識(shí)別

Performance recognition of sulfur flotation based on fuzzy support vector machine
HE Ming-fang, YANG Chun-hua, WANG Xiao-li, GUI Wei-hua

School of Information Science and Engineering, Central South University, Changsha 410083, China

Abstract:Considering performance recognition problem caused by the high noise of froth images and the obvious difference of feature importance in sulfur flotation process, a performance recognition method for sulfur flotation process using fuzzy support vector machine was proposed. With the combination of fuzzy membership and feature information gain, the image feature importance was obtained, and the kernel function of fuzzy support vector machine was improved using the feature importance. Then, the model that reveals the relationship between performance and image feature was established to detect sulfur condition. As the fuzzy membership was used to define a small weight for the noise sample and acquire feature importance, which can reduce the effect of image noise points and reveal the difference of feature importance, the classification accuracy is effectively improved. The simulation results show the effectiveness by using actual running data from a sulfur flotation process of zinc direct leaching hydrometallurgy.

 

Key words: sulfur flotation; feature importance; fuzzy support vector machine; performance recognition

ISSN 1004-0609
CN 43-1238/TG
CODEN: ZYJXFK

ISSN 1003-6326
CN 43-1239/TG
CODEN: TNMCEW

主管:中國(guó)科學(xué)技術(shù)協(xié)會(huì) 主辦:中國(guó)有色金屬學(xué)會(huì) 承辦:中南大學(xué)
湘ICP備09001153號(hào) 版權(quán)所有:《中國(guó)有色金屬學(xué)報(bào)》編輯部
------------------------------------------------------------------------------------------
地 址:湖南省長(zhǎng)沙市岳麓山中南大學(xué)內(nèi) 郵編:410083
電 話:0731-88876765,88877197,88830410   傳真:0731-88877197   電子郵箱:f_ysxb@163.com  
桓仁| 甘谷县| 雅江县| 阳江市| 房产| 宁陕县| 汕头市| 灵山县| 丹江口市| 固原市| 广安市| 勐海县| 中牟县| 板桥市| 新兴县| 方山县| 红河县| 界首市| 苏尼特左旗| 长寿区| 奉贤区| 广安市| 门源| 宜丰县| 台中市| 文登市| 泽普县| 长兴县| 达州市| 松溪县| 盐津县| 汤原县| 夏邑县| 宾川县| 邯郸市| 浦东新区| 云南省| 拉萨市| 巴青县| 泾川县| 曲沃县|