<th id="5nh9l"></th><strike id="5nh9l"></strike><th id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"></th><strike id="5nh9l"></strike>
<progress id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"><noframes id="5nh9l">
<th id="5nh9l"></th> <strike id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"></span>
<progress id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"></span><strike id="5nh9l"><noframes id="5nh9l"><strike id="5nh9l"></strike>
<span id="5nh9l"><noframes id="5nh9l">
<span id="5nh9l"><noframes id="5nh9l">
<span id="5nh9l"></span><span id="5nh9l"><video id="5nh9l"></video></span>
<th id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"></th>
<progress id="5nh9l"><noframes id="5nh9l">

基于改進Informed-RRT*的機械臂抓取運動規劃

Flexible grasping of robot arm based on improved Informed-RRT star

  • 摘要: 為提高工業機械臂對目標物體抓取及對障礙物躲避的效率和成功率,提出一種基于改進抓取信息引導的快速隨機樹星(GI-RRT*)的機械臂路徑規劃算法. 首先,預先設定最大迭代次數和自適應函數,縮短機械臂運動軌跡生成時間,增強采樣導向性和質量;其次,基于橢圓形子集直接采樣,對采樣點位置進行約束,提高采樣效率;最后,采用貪心算法刪除機械臂運動軌跡的冗余點,并使用三次B樣條曲線平滑約束機械臂運動軌跡,提高機械臂運動軌跡的柔順性. 利用生成殘差卷積神經網絡模型預測,輸入深度相機采集的彩色圖像和深度圖像,輸出視場中物體的適當映射抓取位姿. 為驗證機械臂的抓取效果,選擇三指氣動柔性夾爪,設計柔性抓取模塊,并結合法奧(FR3)協作機械臂構建自主抓取系統,進行二維地圖仿真和機械臂樣機實驗. 結果表明,與傳統的信息引導的快速隨機樹星算法相比,GI-RRT*算法運動軌跡長度縮短10.11%,軌跡生成時間縮短62.68%. 同時,算法具有較強的魯棒性. 機械臂能獨立地避開障礙物、抓取目標物體,滿足其自主抓取的需求.

     

    Abstract: With advancements in science and technology, collaborative and industrial robotic arms are increasingly gaining popularity. Enhancing the intelligence and autonomy of robot arms, particularly in autonomous grasping, has become one of the research hotspots in robotics research. To improve the efficiency and success rate of industrial robot arms in grasping target objects and avoiding obstacles, a three-finger pneumatic flexible clamp was selected, and a flexible grasping module was designed. Communication between the upper computer and the single-chip computer via a serial port enables clamping and loosening actions, constructing an autonomous grasping system based on the traditional Informed -RRT* algorithm. An improved info-RRT * algorithm (Grasping informed-RRT *, GI-RRT*) for the GR-ConvNet model is proposed. First, the maximum number of iterations and the adaptive function are pre-set to shorten the generation time of the manipulator’s motion trajectory and enhance sampling guidance and quality. Second, direct sampling of elliptical subsets constrains the position of sampling points, improving sampling efficiency. Finally, a greedy algorithm deletes redundant path points, and a cubic B-spline curve smoothly constrains the trajectory of the robot arm, shortening its length and improving flexibility. The generated residual convolutional neural network (GR-ConvNet) model predicts inputs from color and depth images captured by a depth camera, outputting the appropriate mapping grab pose of the object in the field of view. To verify the grasping effect of the robot arm, simulation and grasping experiments were conducted on the cooperative robot arm FR3. Simulation results show that, compared with the traditional Informed-RRT* algorithm, the improved algorithm shortens trajectory length by 10.11% and reduces trajectory generation time by 62.68%. The robot arm independently avoids obstacles and grasps target objects, meeting the requirements for autonomous grasping. Experiments with the cooperative robot arm demonstrate its ability to independently grasp objects independently and successfully avoid obstacles. This further validates the algorithm’s effectiveness on a real robot arm, bringing hope for its further development and use. It reduces the difficulty for operators to use the robot arm and accelerates the wide application of domestic robot arms in factories. This paper aims to promote the practical application of robot arms.

     

/

返回文章
返回
<th id="5nh9l"></th><strike id="5nh9l"></strike><th id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"></th><strike id="5nh9l"></strike>
<progress id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"><noframes id="5nh9l">
<th id="5nh9l"></th> <strike id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"></span>
<progress id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"></span><strike id="5nh9l"><noframes id="5nh9l"><strike id="5nh9l"></strike>
<span id="5nh9l"><noframes id="5nh9l">
<span id="5nh9l"><noframes id="5nh9l">
<span id="5nh9l"></span><span id="5nh9l"><video id="5nh9l"></video></span>
<th id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"></th>
<progress id="5nh9l"><noframes id="5nh9l">
259luxu-164