3,987 research outputs found

    Mobile manipulators collision-free trajectory planning with regard to end-effector vibrations elimination

    Get PDF
    A sub-optimal point-to-point trajectory planning method for mobile manipulators operating in the workspace including obstacles taking into account the damping of the end-effector vibrations is presented. The proposed solution is based on extended Jacobian approach and redundancy resolution at the acceleration level. Fulfilment of the condition stopping the mobile manipulator at the destination point is guaranteed, which leads to elimination of the end-effector vibrations and significantly increases positioning accuracy. The effectiveness of the presented method is shown and compared to the classical Jacobian pseudo inverse approach. A computer example involving a mobile manipulator consisting of a nonholonomic platform (2,Β 0) class and SCARA-type holonomic manipulator operating in two-dimensional task space including obstacle is also presented

    Numerical approach of collision avoidance and optimal control on robotic manipulators

    Get PDF
    Collision-free optimal motion and trajectory planning for robotic manipulators are solved by a method of sequential gradient restoration algorithm. Numerical examples of a two degree-of-freedom (DOF) robotic manipulator are demonstrated to show the excellence of the optimization technique and obstacle avoidance scheme. The obstacle is put on the midway, or even further inward on purpose, of the previous no-obstacle optimal trajectory. For the minimum-time purpose, the trajectory grazes by the obstacle and the minimum-time motion successfully avoids the obstacle. The minimum-time is longer for the obstacle avoidance cases than the one without obstacle. The obstacle avoidance scheme can deal with multiple obstacles in any ellipsoid forms by using artificial potential fields as penalty functions via distance functions. The method is promising in solving collision-free optimal control problems for robotics and can be applied to any DOF robotic manipulators with any performance indices and mobile robots as well. Since this method generates optimum solution based on Pontryagin Extremum Principle, rather than based on assumptions, the results provide a benchmark against which any optimization techniques can be measured

    Safe Robotic Grasping: Minimum Impact-Force Grasp Selection

    Full text link
    This paper addresses the problem of selecting from a choice of possible grasps, so that impact forces will be minimised if a collision occurs while the robot is moving the grasped object along a post-grasp trajectory. Such considerations are important for safety in human-robot interaction, where even a certified "human-safe" (e.g. compliant) arm may become hazardous once it grasps and begins moving an object, which may have significant mass, sharp edges or other dangers. Additionally, minimising collision forces is critical to preserving the longevity of robots which operate in uncertain and hazardous environments, e.g. robots deployed for nuclear decommissioning, where removing a damaged robot from a contaminated zone for repairs may be extremely difficult and costly. Also, unwanted collisions between a robot and critical infrastructure (e.g. pipework) in such high-consequence environments can be disastrous. In this paper, we investigate how the safety of the post-grasp motion can be considered during the pre-grasp approach phase, so that the selected grasp is optimal in terms applying minimum impact forces if a collision occurs during a desired post-grasp manipulation. We build on the methods of augmented robot-object dynamics models and "effective mass" and propose a method for combining these concepts with modern grasp and trajectory planners, to enable the robot to achieve a grasp which maximises the safety of the post-grasp trajectory, by minimising potential collision forces. We demonstrate the effectiveness of our approach through several experiments with both simulated and real robots.Comment: To be appeared in IEEE/RAS IROS 201

    λͺ¨μ…˜ ν”„λ¦¬λ¨Έν‹°λΈŒλ₯Ό μ΄μš©ν•œ λ³΅μž‘ν•œ λ‘œλ΄‡ μž„λ¬΄ ν•™μŠ΅ 및 μΌλ°˜ν™” 기법

    Get PDF
    ν•™μœ„λ…Όλ¬Έ (박사) -- μ„œμšΈλŒ€ν•™κ΅ λŒ€ν•™μ› : κ³΅κ³ΌλŒ€ν•™ ν•­κ³΅μš°μ£Όκ³΅ν•™κ³Ό, 2020. 8. κΉ€ν˜„μ§„.Learning from demonstrations (LfD) is a promising approach that enables robots to perform a specific movement. As robotic manipulations are substituting a variety of tasks, LfD algorithms are widely used and studied for specifying the robot configurations for the various types of movements. This dissertation presents an approach based on parametric dynamic movement primitives (PDMP) as a motion representation algorithm which is one of relevant LfD techniques. Unlike existing motion representation algorithms, this work not only represents a prescribed motion but also computes the new behavior through a generalization of multiple demonstrations in the actual environment. The generalization process uses Gaussian process regression (GPR) by representing the nonlinear relationship between the PDMP parameters that determine motion and the corresponding environmental variables. The proposed algorithm shows that it serves as a powerful optimal and real-time motion planner among the existing planning algorithms when optimal demonstrations are provided as dataset. In this dissertation, the safety of motion is also considered. Here, safety refers to keeping the system away from certain configurations that are unsafe. The safety criterion of the PDMP internal parameters are computed to check the safety. This safety criterion reflects the new behavior computed through the generalization process, as well as the individual motion safety of the demonstration set. The demonstrations causing unsafe movement are identified and removed. Also, the demolished demonstrations are replaced by proven demonstrations upon this criterion. This work also presents an extension approach reducing the number of required demonstrations for the PDMP framework. This approach is effective where a single mission consists of multiple sub-tasks and requires numerous demonstrations in generalizing them. The whole trajectories in provided demonstrations are segmented into multiple sub-tasks representing unit motions. Then, multiple PDMPs are formed independently for correlated-segments. The phase-decision process determines which sub-task and associated PDMPs to be executed online, allowing multiple PDMPs to be autonomously configured within an integrated framework. GPR formulations are applied to obtain execution time and regional goal configuration for each sub-task. Finally, the proposed approach and its extension are validated with the actual experiments of mobile manipulators. The first two scenarios regarding cooperative aerial transportation demonstrate the excellence of the proposed technique in terms of quick computation, generation of efficient movement, and safety assurance. The last scenario deals with two mobile manipulations using ground vehicles and shows the effectiveness of the proposed extension in executing complex missions.μ‹œμ—° ν•™μŠ΅ 기법(Learning from demonstrations, LfD)은 λ‘œλ΄‡μ΄ νŠΉμ • λ™μž‘μ„ μˆ˜ν–‰ν•  수 μžˆλ„λ‘ ν•˜λŠ” μœ λ§ν•œ λ™μž‘ 생성 기법이닀. λ‘œλ΄‡ μ‘°μž‘κΈ°κ°€ 인간 μ‚¬νšŒμ—μ„œ λ‹€μ–‘ν•œ 업무λ₯Ό λŒ€μ²΄ν•΄ 감에 따라, λ‹€μ–‘ν•œ μž„λ¬΄λ₯Ό μˆ˜ν–‰ν•˜λŠ” λ‘œλ΄‡μ˜ λ™μž‘μ„ μƒμ„±ν•˜κΈ° μœ„ν•΄ LfD μ•Œκ³ λ¦¬μ¦˜λ“€μ€ 널리 μ—°κ΅¬λ˜κ³ , μ‚¬μš©λ˜κ³  μžˆλ‹€. λ³Έ 논문은 LfD 기법 쀑 λͺ¨μ…˜ ν”„λ¦¬λ¨Έν‹°λΈŒ 기반의 λ™μž‘ μž¬μƒμ„± μ•Œκ³ λ¦¬μ¦˜μΈ Parametric dynamic movement primitives(PDMP)에 κΈ°μ΄ˆν•œ μ•Œκ³ λ¦¬μ¦˜μ„ μ œμ‹œν•˜λ©°, 이λ₯Ό 톡해 λ‹€μ–‘ν•œ μž„λ¬΄λ₯Ό μˆ˜ν–‰ν•˜λŠ” λͺ¨λ°”일 μ‘°μž‘κΈ°μ˜ ꢀ적을 μƒμ„±ν•œλ‹€. 기쑴의 λ™μž‘ μž¬μƒμ„± μ•Œκ³ λ¦¬μ¦˜κ³Ό 달리, 이 μ—°κ΅¬λŠ” 제곡된 μ‹œμ—°μ—μ„œ ν‘œν˜„λœ λ™μž‘μ„ λ‹¨μˆœνžˆ μž¬μƒμ„±ν•˜λŠ” 것에 κ·ΈμΉ˜μ§€ μ•Šκ³ , μƒˆλ‘œμš΄ ν™˜κ²½μ— 맞게 μΌλ°˜ν™” ν•˜λŠ” 과정을 ν¬ν•¨ν•œλ‹€. 이 λ…Όλ¬Έμ—μ„œ μ œμ‹œν•˜λŠ” μΌλ°˜ν™” 과정은 PDMPs의 λ‚΄λΆ€ νŒŒλΌλ―Έν„° 값인 μŠ€νƒ€μΌ νŒŒλΌλ―Έν„°μ™€ ν™˜κ²½ λ³€μˆ˜ μ‚¬μ΄μ˜ λΉ„μ„ ν˜• 관계λ₯Ό κ°€μš°μŠ€ νšŒκ·€ 기법 (Gaussian process regression, GPR)을 μ΄μš©ν•˜μ—¬ μˆ˜μ‹μ μœΌλ‘œ ν‘œν˜„ν•œλ‹€. μ œμ•ˆλœ 기법은 λ˜ν•œ 졜적 μ‹œμ—°λ₯Ό ν•™μŠ΅ν•˜λŠ” 방식을 톡해 κ°•λ ₯ν•œ 졜적 μ‹€μ‹œκ°„ 경둜 κ³„νš κΈ°λ²•μœΌλ‘œλ„ μ‘μš©λ  수 μžˆλ‹€. λ³Έ λ…Όλ¬Έμ—μ„œλŠ” λ˜ν•œ λ‘œλ΄‡μ˜ ꡬ동 μ•ˆμ „μ„±λ„ κ³ λ €ν•œλ‹€. κΈ°μ‘΄ μ—°κ΅¬λ“€μ—μ„œ 닀루어진 μ‹œμ—° 관리 기술이 λ‘œλ΄‡μ˜ ꡬ동 νš¨μœ¨μ„±μ„ κ°œμ„ ν•˜λŠ” λ°©ν–₯으둜 μ œμ‹œλœ 것과 달리, 이 μ—°κ΅¬λŠ” κ°•ν•œ κ΅¬μ†μ‘°κ±΄μœΌλ‘œ λ‘œλ΄‡μ˜ ꡬ동 μ•ˆμ „μ„±μ„ ν™•λ³΄ν•˜λŠ” μ‹œμ—° 관리 κΈ°μˆ μ„ 톡해 μ•ˆμ •μ„±μ„ κ³ λ €ν•˜λŠ” μƒˆλ‘œμš΄ 방식을 μ œμ‹œν•œλ‹€. μ œμ•ˆλœ 방식은 μŠ€νƒ€μΌ νŒŒλΌλ―Έν„° κ°’ μƒμ—μ„œ μ•ˆμ „μ„± 기쀀을 κ³„μ‚°ν•˜λ©°, 이 μ•ˆμ „ 기쀀을 톡해 μ‹œμ—°μ„ μ œκ±°ν•˜λŠ” 일련의 μž‘μ—…μ„ μˆ˜ν–‰ν•œλ‹€. λ˜ν•œ, 제거된 μ‹œμœ„λ₯Ό μ•ˆμ „ 기쀀에 따라 μž…μ¦λœ μ‹œμœ„λ‘œ λŒ€μ²΄ν•˜μ—¬ μΌλ°˜ν™” μ„±λŠ₯을 μ €ν•˜μ‹œν‚€μ§€ μ•Šλ„λ‘ μ‹œμœ„λ₯Ό κ΄€λ¦¬ν•œλ‹€. 이λ₯Ό 톡해 λ‹€μˆ˜μ˜ μ‹œμ—° 각각 κ°œλ³„ λ™μž‘ μ•ˆμ „μ„± 뿐 μ•„λ‹ˆλΌ 온라인 λ™μž‘μ˜ μ•ˆμ „μ„±κΉŒμ§€ κ³ λ €ν•  수 있으며, μ‹€μ‹œκ°„ λ‘œλ΄‡ μ‘°μž‘κΈ° μš΄μš©μ‹œ μ•ˆμ „μ„±μ΄ 확보될 수 μžˆλ‹€. μ œμ•ˆλœ μ•ˆμ •μ„±μ„ κ³ λ €ν•œ μ‹œμ—° 관리 κΈ°μˆ μ€ λ˜ν•œ ν™˜κ²½μ˜ 정적 섀정이 λ³€κ²½λ˜μ–΄ λͺ¨λ“  μ‹œμ—°μ„ ꡐ체해야 ν•  수 μžˆλŠ” μƒν™©μ—μ„œ μ‚¬μš©ν•  수 μžˆλŠ” μ‹œμ—°λ“€μ„ νŒλ³„ν•˜κ³ , 효율적으둜 μž¬μ‚¬μš©ν•˜λŠ” 데 μ‘μš©ν•  수 μžˆλ‹€. λ˜ν•œ λ³Έ 논문은 λ³΅μž‘ν•œ μž„λ¬΄μ—μ„œ 적용될 수 μžˆλŠ” PDMPs의 ν™•μž₯ 기법인 seg-PDMPsλ₯Ό μ œμ‹œν•œλ‹€. 이 접근방식은 λ³΅μž‘ν•œ μž„λ¬΄κ°€ 일반적으둜 볡수개의 κ°„λ‹¨ν•œ ν•˜μœ„ μž‘μ—…μœΌλ‘œ κ΅¬μ„±λœλ‹€κ³  κ°€μ •ν•œλ‹€. κΈ°μ‘΄ PDMPs와 달리 seg-PDMPsλŠ” 전체 ꢀ적을 ν•˜μœ„ μž‘μ—…μ„ λ‚˜νƒ€λ‚΄λŠ” μ—¬λŸ¬ 개의 λ‹¨μœ„ λ™μž‘μœΌλ‘œ λΆ„ν• ν•˜κ³ , 각 λ‹¨μœ„λ™μž‘μ— λŒ€ν•΄ μ—¬λŸ¬κ°œμ˜ PDMPsλ₯Ό κ΅¬μ„±ν•œλ‹€. 각 λ‹¨μœ„ λ™μž‘ λ³„λ‘œ μƒμ„±λœ PDMPsλŠ” ν†΅ν•©λœ ν”„λ ˆμž„μ›Œν¬λ‚΄μ—μ„œ 단계 κ²°μ • ν”„λ‘œμ„ΈμŠ€λ₯Ό 톡해 μžλ™μ μœΌλ‘œ ν˜ΈμΆœλœλ‹€. 각 단계 λ³„λ‘œ λ‹¨μœ„ λ™μž‘μ„ μˆ˜ν–‰ν•˜κΈ° μœ„ν•œ μ‹œκ°„ 및 ν•˜μœ„ λͺ©ν‘œμ μ€ κ°€μš°μŠ€ 곡정 νšŒκ·€(GPR)λ₯Ό μ΄μš©ν•œ ν™˜κ²½λ³€μˆ˜μ™€μ˜μ˜ 관계식을 톡해 μ–»λŠ”λ‹€. 결과적으둜, 이 μ—°κ΅¬λŠ” μ „μ²΄μ μœΌλ‘œ μš”κ΅¬λ˜λŠ” μ‹œμ—°μ˜ 수λ₯Ό 효과적으둜 쀄일 뿐 μ•„λ‹ˆλΌ, 각 λ‹¨μœ„λ™μž‘μ˜ ν‘œν˜„ μ„±λŠ₯을 κ°œμ„ ν•œλ‹€. μ œμ•ˆλœ μ•Œκ³ λ¦¬μ¦˜μ€ ν˜‘λ™ λͺ¨λ°”일 λ‘œλ΄‡ μ‘°μž‘κΈ° μ‹€ν—˜μ„ ν†΅ν•˜μ—¬ κ²€μ¦λœλ‹€. μ„Έ κ°€μ§€μ˜ μ‹œλ‚˜λ¦¬μ˜€κ°€ λ³Έ λ…Όλ¬Έμ—μ„œ 닀루어지며, 항곡 μš΄μ†‘κ³Ό κ΄€λ ¨λœ 첫 두 가지 μ‹œλ‚˜λ¦¬μ˜€λŠ” PDMPs 기법이 λ‘œλ΄‡ μ‘°μž‘κΈ°μ—μ„œ λΉ λ₯Έ 적응성, μž„λ¬΄ νš¨μœ¨μ„±κ³Ό μ•ˆμ „μ„± λͺ¨λ‘ λ§Œμ‘±ν•˜λŠ” 것을 μž…μ¦ν•œλ‹€. λ§ˆμ§€λ§‰ μ‹œλ‚˜λ¦¬μ˜€λŠ” 지상 μ°¨λŸ‰μ„ μ΄μš©ν•œ 두 개의 λ‘œλ΄‡ μ‘°μž‘κΈ°μ— λŒ€ν•œ μ‹€ν—˜μœΌλ‘œ λ³΅μž‘ν•œ μž„λ¬΄ μˆ˜ν–‰μ„ ν•˜κΈ° μœ„ν•΄ ν™•μž₯된 기법인 seg-PDMPsκ°€ 효과적으둜 λ³€ν™”ν•˜λŠ” ν™˜κ²½μ—μ„œ μΌλ°˜ν™”λœ λ™μž‘μ„ 생성함을 κ²€μ¦ν•œλ‹€.1 Introduction 1 1.1 Motivations 1 1.2 Literature Survey 3 1.2.1 Conventional Motion Planning in Mobile Manipulations 3 1.2.2 Motion Representation Algorithms 5 1.2.3 Safety-guaranteed Motion Representation Algorithms 7 1.3 Research Objectives and Contributions 7 1.3.1 Motion Generalization in Motion Representation Algorithm 9 1.3.2 Motion Generalization with Safety Guarantee 9 1.3.3 Motion Generalization for Complex Missions 10 1.4 Thesis Organization 11 2 Background 12 2.1 DMPs 12 2.2 Mobile Manipulation Systems 13 2.2.1 Single Mobile Manipulation 14 2.2.2 Cooperative Mobile Manipulations 14 2.3 Experimental Setup 17 2.3.1 Test-beds for Aerial Manipulators 17 2.3.2 Test-beds for Robot Manipulators with Ground Vehicles 17 3 Motion Generalization in Motion Representation Algorithm 22 3.1 Parametric Dynamic Movement Primitives 22 3.2 Generalization Process in PDMPs 26 3.2.1 Environmental Parameters 26 3.2.2 Mapping Function 26 3.3 Simulation Results 29 3.3.1 Two-dimensional Hurdling Motion 29 3.3.2 Cooperative Aerial Transportation 30 4 Motion Generalization with Safety Guarantee 36 4.1 Safety Criterion in Style Parameter 36 4.2 Demonstration Management 39 4.3 Simulation Validation 42 4.3.1 Two-dimensional Hurdling Motion 46 4.3.2 Cooperative Aerial Transportation 47 5 Motion Generalization for Complex Missions 51 5.1 Overall Structure of Seg-PDMPs 51 5.2 Motion Segments 53 5.3 Phase-decision Process 54 5.4 Seg-PDMPs for Single Phase 54 5.5 Simulation Results 55 5.5.1 Initial/terminal Offsets 56 5.5.2 Style Generalization 59 5.5.3 Recombination 61 6 Experimental Validation and Results 63 6.1 Cooperative Aerial Transportation 63 6.2 Cooperative Mobile Hang-dry Mission 70 6.2.1 Demonstrations 70 6.2.2 Simulation Validation 72 6.2.3 Experimental Results 78 7 Conclusions 82 Abstract (in Korean) 93Docto
    • …
    corecore