Recent Advances in Bipedal Walking Robots: Review of Gait, Drive, Sensors and Control Systems
Abstract
:1. Introduction
- Bipedal robots have multiple degrees of freedom (DOFs). Most researchers use simplified models to reach a trade-off between simplicity and the dexterity [18];
2. Bipedal Walking Mechanism
2.1. Bipedal Walking of Human
- The evolution theory;
- Theory of minimizing energy consumption;
- The theory of maturation (grow from childhood to adulthood);
- Central pattern generator theory;
- The theory of bipedal locomotion as a result of the two cooperating mechanisms;
- The theory of bipedal robots (gait can be generated by stability and online feedback control [7].
- The general view: the stable, controlled bipedal gait in various environments and during fulfilling various meaningful tasks (including cognitive tasks);
- Combination and transition between thedifferent modes of bipedal locomotion: walking and running without falling [34];
- The high-level control of walking: cooperation of trajectory planning algorithms and central pattern generators [35];
- The adaptive control layer that considers dynamic stability, detecting ground movement or slippery surfaces during walking.
2.2. Application of Bipedal Gait of Humans for Biped Robots
- Independent neural control of parameters during gait;
- The coupling of the metatarsal to the medullary regulation;
- The ability to adapt and remember the new inter-acting patterns;
- Involvement of the cerebellum in generating substantive commands based on foot signals;
2.3. Concepts of Bipedal Walking Robots Based on Human Walking
- The complete gait cycle of human walking consists of two main successive phases: the double support phase (DSP, 20%) and the single support phase (SSP, 80%) with intermediate sub-phases (toe-off, forward swing, and heel strike) [54]. DSP results in a closed chain mechanism, while the SSP starts when one of the feet begins the forward swing phase [55].
- Balance and stability problem is important especially during the SSP when bipedal motion is unstab [56]. In general, there are two kinds of stability criteria: static and dynamic. Static stability depends on the vertical projection of the centre of mass on the support surface [57] and allows to simplify the design of bipedal robots considerably and open-loop balancing can be assumed with large enough feet [58]. For dynamic stability, the following methods are usually considered: zero moment point (ZMP) [57], centroidal angular momentum [59], footstep-based criteria [60], and periodicity-based gait [61,62,63,64]. Further details can be also found in previous literature [6,9,65].
- The learning process (requires intelligence);
- A considerable level of ability to adapt to different conditions or to solve tasks of different obstacles in the terrain;
- Under certain conditions (e.g., long-distance walking), optimal movement to reduce walking energy consumption.
2.4. Selected Issues of Bird Gait
- Independent control of the angular movement and the length of the legs to ensure dynamic stability;
- Control of the speed of movement with positive feedback to ensure a constant load on the legs in uneven terrain;
- Adjusting the muscles to the load, which stabilizes the mechanical energy usage of the body;
- Complex regeneration strategies that allow changing the dynamics of the body, while regulating the load on the legs, which in turn minimizes the risk of falling.
3. Designs of Biped Walking Robots
3.1. Overview of Bipedal Robots
- Human Biped Walking Robots (HBWR);
- Bird Biped Walking Robots (BBWR);
- Synthetic Biped Walking Robots (SBWR)—other solutions based on a heuristic, synthetic ideas.
3.2. Human Biped Walking Robots (HBWR)
3.3. Bird-Based Biped Walking Robots (BBWR)
3.4. Synthetic Bipedal Walking Robots (SBWR)
- The start of the central common drive () that rotates left moving the right leg concerning the left one, at the same time the mass moves and stabilizes the robot’s centre of gravity (see the example centre of gravity—COG—position) within the left foot’s footprint;
- The central driver () stops;
- Left foot () swivels motor is started to rotate the robot around the left foot by αL angle;
- Left foot drive () is stopped when the final angular position is reached;
- Central common drive () starts to rotate right by φ angle lowering the right leg and at the same time the stabilizing mass moves to the upright position and the robot statically stabilizes on both feet.
4. Drive and Control Systems of Biped Walking Robots
4.1. Drive Systems
- Serial drive on-axis;
- Serial drive off-axis (requires gear);
- Parallel mechanism cranks-lever;
- Parallel mechanism, with a linear drive;
- Mixed serial/parallel mechanism.
4.2. Control Systems
- First, how to generate the desired reference trajectory for a biped with high degrees of freedom.
- The second is how to guarantee (feasibly balance/stabilized) reference trajectory for the robot. This question is relevant if approximate models for trajectory planning are used.
- The third is how to precisely track the desired angular joint references considering the computational complexity of the high degrees of freedom of the biped. For example, Figure 2 suggests a general multi-level stabilization control for ZMP-based biped robot.
- How to keep continuous COG state variables while changing the biped status/orientation? A modification to the IPM is required as discussed in [2].
- How to reduce the modelling error caused by the IPM inaccuracy? This can be answered by the mid-level control 1.
4.3. Sensor Systems
- Body orientation system. To capture the trunk tilt of the biped, inertial measurement unit (IMU) sensors are commonly used, as they contain accelerometers and gyroscopes that through sensor fusion can be used for reliable orientation estimation. They are installed on the trunk in addition, some IMUs are placed on the feet to detect the feet inclination. Incremental, high-resolution encoders are often connected to joint motor shafts to measure joint positions and allow computation of positions and velocities. For detailed characteristics of these sensors, see the examples [154,155,156].
- Foot sole sensor system (Force sensors). The ground reaction forces play an important role in the stabilization of the biped mechanism and detecting ground stability. If these forces are outside the stability region, the foot may slip, and the biped robot might be not able to avoid a fall. Therefore, controlling these forces is necessary via confining the ground reaction forces to stay within the support foot/feet. This strategy meets the concept of ZMP. The ground reaction force wrench can be measured by placing four six-axes force/torque sensors on the foot sole.
- Touch sensor system. Some biped robots are designed to work in a home environment where there is a contact (touch) between the robot and human. Therefore, it is recommended to install the tactile sensor at specific locations to avoid trapping human hands/fingers in-between the robot joints. For example, [156] has used 19 tactile sensors placed inside the main elements of the robot. If these sensors are activated, then the biped robot attempts to release the joint forces.
- Force sensing. In the case of electric drives, monitoring of forces that robots can apply can be done using simple current sensing that can be part of the motor controller or external circuitry. For hydraulic actuation systems, pressure sensors installed on supply lines can be utilized to quantify force production.
- Audio sensor system. This sensor system is necessary for online communication with humans where a multi-microphone system is built. For example, the solution [156] installed seven audio sensors (microphones) on the head of the biped mechanism.
- Visual sensor system. Here, most typically, the head is equipped with a stereo camera-based vision system to identify objects and avoid obstacles, see [157] for more details on this topic.
4.4. Navigation Systems of Bipedal Robots in Uneven Terrain
4.5. Comparison of Known Modern Bipedal Robots Based on Human or Bird Walking
4.6. Energy Sources of Robots
- Energy storage, including batteries and capacitors/supercapacitors;
- Power generators—fuel cells, classical electromagnetic generators, and solar cells;
- Power harvesting (phototovoltaic, electrochemical, wireless, thermoelectric, etc.) and nanogenerators (micro-/nano-energy sources, self-powered sensors, and flexible transducers).
- Improve system of management of conventional Li-ion batteries;
- Improved design of Li-ion batteries by changing construction and composition lowers costs and improves performance (cobalt-free lithium-ion battery, mesoporous silicon microparticles and carbon nanotubes, lithium-sulphur batteries);
- New design and chemistry of batteries improve performance (vertically aligned carbon nanotube (VACNT), aluminium-air light battery);
- Design which improved time of charge (solid state lithium-ion batteries with sulphide superionic conductors);
- Structural batteries using carbon fibres as the negative electrode while the positive is a lithium iron phosphate; the latest battery has a stiffness of 25 GPa. It is possible to use it to design superlight electric vehicles and also walking robots.
4.7. Energy Efficiency of the Walking Robot’s Motion
5. Future of Bipedal Walking Robots
5.1. Limitations of Development of Walking Robots
- Theoretical limitations—there is a lack of comprehensive theories regarding the biomechanics, kinematics, and mechanisms of control/coordinating gait, ambulation, and clinical gait assessment; thus, it is hard to understand all aspects of bipedal gait, both physiological and pathological, and reflect them within the bipedal walking robot.
- Technical limitations—current technologies of bipedal walking robots are:
- ○
- hard to assess due to limitations of computational models;
- ○
- complicated design and control;
- ○
- cost-effective only in several specialized applications, e.g., space exploration, military purposes, etc.
- Cognitive and ethical limitations—despite wide development (robots for the elderly, robotic toys for children, etc.), there is a need to increase common attention to the ethical limitations of using technology (including ICT and AI) for care interventions for people with limited self-awareness, insight, and orientation.
5.2. Achievements and Opportunities
5.3. Directions of Future Research
- from a scientific point of view: knowledge sharing, including open-source solutions;
- from a technological point of view: on the development of robot navigation and artificial intelligence systems;
- from an organizational point of view: interdisciplinary collaboration among various research centres, virtual research teams, platforms for experiences, knowledge, and project sharing;
- from a clinical point of view: taking into consideration advanced applications of the aforementioned solutions in everyday therapy;
- from a societal and industrial point of view: dissemination of the knowledge and experiences, building social awareness concerning wider use of the bipedal robot walking in various areas of the daily life.
- high-quality studies to address research gaps within neural control and biomechanics of bipedal gait;
- the use of a highly dynamic hydraulic drive and the use of an innovative sensors system based on the LIDAR scanner system combined with an artificial vision system using stereo cameras set a completely new level in the field of robot’s world analysis;
- space exploration plans will mostly benefit from the development of autonomous walking robotics [194];
- a very important direction of the development of the bipedal walking robots mechanism will be further efforts to find solutions with high energy efficiency (low COT value). The goal is to approach and maybe even overcome the limit COT = 0.2 defined for some human walking conditions. This will allow increasing the range of robots with limited battery capacity.
5.4. Main Direction of Walking Robot Applications
- Solving problems in uncertain environments and assistance in hazardous places—firefighter support, zones with radioactive contamination, extreme temperatures, explosion risk zones, mines, outer space, etc.
- In the future, intelligent bipedal robots can be used in factories to serve as a replacement or a collaborator for human workers;in services for jobs that require taking on strenuous, uncomfortable positions or low-paying jobs that humans do not want to do, interactive robots may open new chances toward human–robot relationships, social awareness, activity monitoring, activity eliciting, and learning.
- Artificial environments such as virtual reality and augmented reality and brain–computer interface (BCI)may be more advanced alternatives for the traditional human–robot interface, providing multimodal interaction comparable to inter-human communication.
- Mobile technologies open new possibilities of remote control, e.g., for children/elderly safety and telemedicine/telerehabilitation purposes, as well as a general condition, sport, and leisure activities.
- Application of intelligent robots in space missions, both on their own and in supporting people, which may require the ability to walk.
- In conclusion, it should be stated that we are approaching the moment when robots in a much more perfect form than so far will enter our lives on two legs equipped with human-friendly artificial intelligence.
6. Conclusions
- The artificial gait solutions of legged robots are based on the essence of the biological standard that has been created in the natural process of evolution through the development of joint muscles and the excellent biological control system;
- Gait inspirations for versatile application of walking robots can be gained from birds, insects, or other animals, not popularly used in walking research currently;
- Characterizing the essence of human gait and achieving it inmechatronics, drives, and control systems enabled the creation of solutions imitating this way of locomotion;
- The artificial gait systems based on a human biological pattern are built with varying degrees of complexity from 12–30 DOFs (close to human kinematics) to 6 DOFs or less (extremely simplified);
- Models imitating human gait mainly use electric drives with various motor types; in addition, especially recently developed walkers provide excellent performance using hydraulic drives or artificial muscles as in the Atlas robot;
- The new advanced design of bipedal robots based on natural patterns are Cassie and Digit, which use the pattern of bird gait. These robots use, with success, electric drives and are the fastest bipedal walking robots nowadays;
- The newly proposed solution based on the unique (synthetic) idea is a walking robot without a knee (10 DOFs);
- The bipedal innovative walking mechanism with excellent manoeuvrability equipped with two legs sliding in body with swivel feet allow to move on flat terrain at 3 DOFs, and at 4 DOFs, also climbing stairs becomes possible;
- An interesting design of walking robots is the robot Leo with a versatile drive, which can gait on two legs as a bipedal robot and fly as a drone;
- The conventional sensor system of advanced solution biped walking robots needs five categories of sensors systems of body orientation, foot sole, force, touch, vision, and audio.These kinds of sensors need both to solve the problem of moving robots by walking and communication of robots with the environment;
- Modern bipedal walking robots allow movement on flat surfaces in the field, the best solutions of a bipedal robot equipped with visual and LIDAR sensors can be used in uneven terrain to solve problems in conditions dangerous for humans—fire hazards, radioactive contamination hazards, or in outer space;
- Advanced walking robots that are based on natural biped gait need complicated drive and control systems with many sensors. This is related to the stabilization of the inverted pendulum system created by the legs. This problem does not exist in the presented biped (3 DOFs or 4 DOFs) walking robots with swivel feet;
- Combining the possibilities of building bipedal walking robots and equipping them with AI and human communication systems such as speech synthesis and recognition, and affective computing systems open new applications for these robots;
- The running time of the robots depends both on the performance of the power supply system but also on the COT parameter, which reaches for the DURUS robot a value of 1.5, and for the CASSIE robot COT = 0.7, when for humans the observed value is COT = 0.2;
- Walking robots use both hydraulic drives (ATLAS), which provide the greatest dynamics, and electric drives (DURUS, CASSIE, etc.). Rapid development of powerful batteries suitable for fast recharging is foreseen.
- from a scientific point of view: knowledge sharing, including open-source solutions;
- from a technological point of view: on the development of robot navigation and artificial intelligence systems;
- from an organizational point of view: interdisciplinary collaboration among various research centres, virtual research teams, platforms for experiences, knowledge, and project sharing;
- from a clinical point of view: taking into consideration advanced applications of the aforementioned solutions in everyday therapy;
- from a societal and industrial point of view: dissemination of the knowledge and experiences, building social awareness concerning wider use of the bipedal robot walking in various areas of the daily life.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
AI | artificial intelligence |
ASD | autism spectrum disorder |
BBWR | bird biped walking robot |
BCI | brain-computer interface |
BLDC | brushless DC |
COG | centre of gravity |
COT | cost of transport |
CPG | central pattern generator |
DC | central drive of legs move |
DG | independent balancing drive |
DL | drive of left foot |
DR | drive of right foot |
DC | direct current |
DOFs | degrees of freedom |
DSP | double support phase |
EHA | electro-hydrostatic actuator |
HBWR | human biped walking robots |
ICT | information and communications technology |
IMU | inertial measurement unit |
LIDAR | light detection and ranging |
PID | proportional–integral–derivative |
SBWR | synthetic biped walking robots |
SMA | shape memory alloys |
SR | specific resistance |
SSP | single support phase |
VO | visual odometry |
ZMP | zero moment point |
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No. | Topic | Years | Type | Remarks |
---|---|---|---|---|
Experimental biped robots | ||||
1. | WL-1 [93] | 1966–1967 | HBWR | Artificial lower limb. The base for further studies on bipedal robots. |
2. | WL-3 [93] | 1968–1969 | HBWR | Bipedal walking device Master/Slave: walking, sitting, and standing device. |
3. | WAP-1 [93] | 1969 | HBWR | A bipedal walking robot with artificial rubber muscles, pre-programmed gait sequence. |
4. | WAP-2 [93] | 1970 | HBWR | A bipedal walking robot with effectors, automated posture adjustment thanks to feet sensors. |
5. | WAP-3 [93] | 1971 | HBWR | First bipedal walking robot able to climb the stairs. |
6. | WL-5 [93] | 1970–1972 | HBWR | Heavy bipedal walking robot with flexiblehips. |
7. | WL-9DR [93] | 1980–1982 | HBWR | Quasi-dynamical robot. One step in every 10 s. |
8. | WL-10, 10R [93] | 1982–1983 | HBWR | One step in every 4.4 s, possibility of turnaround. |
9. | WL-10RD [93] | 1984 | HBWR | Dynamically stable robot. One step in every 1.3 s. |
Walking robots based on natural bipeds | ||||
10. | ASIMO [24] | 1986 | HBWR | Interactive robot. Gait velocity up to 5.95 km/h. |
11. | HRP-2 [94] | 2002 | HBWR | Lifting objects, moving in unknown terrain. |
12. | iCub [95] | 2004 | HBWR | Open-source robotics humanoid robot for research of human cognition and artificial intelligence. |
13. | NAO [96] | 2007 | HBWR | Small walking robot for educational tasks. |
14. | HRP-4C [97] | 2009 | HBWR | Female robot with a realistic face. Movement-based on captured human motion. |
15. | HRP-4 [98] | 2010 | HBWR | Can collaborate with humans, exhibits human-like gait. |
16. | PETMAN [99] | 2011 | HBWR | Protection Ensemble Test Mannequin. |
17. | REEM-C [100] | 2013 | HBWR | Human–robot interaction. |
18. | ATLAS [101,102,103] | 2013–2020 | HBWR | Search and rescue tasks, very dynamic, walking in uneven terrain, running, jumping capabilities. |
19. | Robonaut 2 [104] | 2014 | HBWR | NASA robots get special legs with manipulation functions. |
20. | TORO [105] | 2014 | HBWR | TORO is a humanoid robot controlled by torque used to study bipedal walking and autonomous manipulation. |
21. | ATRIAS [106] | 2015 | BBWR | Bipedal robot inspired by bird gait kinematics. |
22. | WALKMAN [107] | 2015 | HBWR | Rich sensory system control of loads and thermal sensing/fatigue of actuators and electronics. |
23. | CHIMP [108] | 2015 | HBWR | Carnegie Melon University robot for rescue task. |
24. | THORMANG [109,110] | 2015 | HBWR | Open-source advanced walking robot with the possibility to change to the wheeled platform. |
25. | Valkyrie [111] | 2015 | HBWR | NASA’s Most Advanced Space Humanoid Robot. |
26. | DRC-Hubo+ [112] | 2015 | HBWR | This robot can use tools, open doors, drive a vehicle, and transform into a wheeled robot. |
27. | DURUS [113,114] | 2015 | HBWR | SRI’s robot with high energetic efficiency. |
28. | HBS-1 [115] | 2016 | HBWR | Child size walking robots for different tasks. |
29. | Kenogro [116] | 2016 | HBWR | Kenogro was equipped with body skeletal structure driven by muscle. |
30. | Hydra [117] | 2016 | HBWR | Hydra uses electro-hydrostatic actuators (EHAs) with its own pump. It combines the advantages of hydraulic and electric drives. |
31. | Cassie [118] | 2016 | BBWR | Dynamic robots walk and run as the animal (bird). |
32. | NimbRo-OP2 [119] | 2017 | HBWR | Adult-sized open-source, low cost, a 3D printable humanoid robot. |
33. | TALOS [120] | 2017 | HBWR | TALOS is humanoid, which can walk on uneven terrain, and perform tasks both in research and industrial environments (can operate power tools and lift 6 kg in each hand). |
34. | HRP-5P [121] | 2018 | HBWR | A humanoid robot that can use a power tool and manipulate large objects. |
35. | Digit [122] | 2019 | BBWR | Robots with many sensors based on Cassie kinematic for dynamical running in difficult environments, can do advanced tasks. |
36. | WANDERRER [123,124] | 2020 | HBWR | Walking robot with an innovative mechanism for high energy performance and endurance. |
Do-It-Yourself bipedal walking robots | ||||
37. | DARwIn-OP, DARwIn-OP2 [125] | 2011 | HBWR | Dynamic Anthropomorphic Robot with Intelligence—Open Platform Robot humanoid kit. |
38. | Low-cost 3D Printed Humanoid Robot | HBWR | Cost lower than 1000 Euro. | |
39. | Poppy [126] | 2012 | HBWR | Robot humanoid kit Interactive robot Open-source license. |
40. | Lim andYeap [127] | 2012 | HBWR | 6 DOFs walking robot. |
41. | RQ-HUNO [128] | 2014 | HBWR | Robot humanoid kit. |
42. | Red-Dragon V3 [129] | 2014 | HBWR | Mobile device-controlled robot. |
43. | w00dBob [130] | 2014 | HBWR | A biped wooden robot controlled by Arduino Nano. |
Synthetic bipedal walking robots | ||||
44. | RotoFoot * [131,132,133,134] | 2014 | SBWR | Walking robot with rotary feet. |
45. | Slider [135,136] | 2018 | SBWR | Walking robot without knees. |
46. | LEO [137,138] | 2021 | SBWR | Multimodal walking robot with the possibility to fly as a drone. |
Robot Year | Manufacturer | Height cm Mass, kg | Elements of the Control System | Type ** Number of Drives | Speed km/h Load, kg | ||||
---|---|---|---|---|---|---|---|---|---|
Joints | IMU | LIDAR | Camera | F/T | |||||
Walking robots based on human gait | |||||||||
HRP-5P 2013 | Japan | 183 101 | Position | x | x | Stereo vision | 4x | E. HD 37 | - 13 |
Valkyrie 2013 | NASA | 187 129 | Position Torque | 7x | Multiple. cameras | 2x | E. SEA 44 | - - | |
Toro 2014 | GAC Germany | 174 76 | Position Torque | 2x | RGB&D camera | E. HD 39 | 1.8 10 | ||
Atlas–N. G. 2015 | Boston Dynamics | 150 75 | Position Force | x | Stereo vision | H. S-v. 30 | 5.4 | ||
WALK-MAN 2015 (2018) | IIT Italy | 191/185 132/102 | Position Torque | 2x | Multiple cameras | 2x | E. SEA 29 | - 10 | |
Kengoro 2016 | Tokyo University | 167 56.9 | Position Tension | x | Stereo vision | 2x | E. Muscle Tend./106 | - - | |
NimbRo-OP2 2017 | Bonn University | 135 19 | Position | x | Stereo vision | E. DCSM 34 | - - | ||
TALOS 2017 | PAL Spain | 175 95 | Position Torque | x | RGB&D camera | E. HD 32 | - - | ||
Walking robot based on birds gait | |||||||||
Cassie * 2016 | Agility Robotics | 115 31 | Position | x | E. CD 10 | 5 | |||
Digit 2019 | Agility Robotics | 155 42.2 | Position | x | x | 4x Depth camera | E. CD 16 | - - |
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Mikolajczyk, T.; Mikołajewska, E.; Al-Shuka, H.F.N.; Malinowski, T.; Kłodowski, A.; Pimenov, D.Y.; Paczkowski, T.; Hu, F.; Giasin, K.; Mikołajewski, D.; et al. Recent Advances in Bipedal Walking Robots: Review of Gait, Drive, Sensors and Control Systems. Sensors 2022, 22, 4440. https://doi.org/10.3390/s22124440
Mikolajczyk T, Mikołajewska E, Al-Shuka HFN, Malinowski T, Kłodowski A, Pimenov DY, Paczkowski T, Hu F, Giasin K, Mikołajewski D, et al. Recent Advances in Bipedal Walking Robots: Review of Gait, Drive, Sensors and Control Systems. Sensors. 2022; 22(12):4440. https://doi.org/10.3390/s22124440
Chicago/Turabian StyleMikolajczyk, Tadeusz, Emilia Mikołajewska, Hayder F. N. Al-Shuka, Tomasz Malinowski, Adam Kłodowski, Danil Yurievich Pimenov, Tomasz Paczkowski, Fuwen Hu, Khaled Giasin, Dariusz Mikołajewski, and et al. 2022. "Recent Advances in Bipedal Walking Robots: Review of Gait, Drive, Sensors and Control Systems" Sensors 22, no. 12: 4440. https://doi.org/10.3390/s22124440
APA StyleMikolajczyk, T., Mikołajewska, E., Al-Shuka, H. F. N., Malinowski, T., Kłodowski, A., Pimenov, D. Y., Paczkowski, T., Hu, F., Giasin, K., Mikołajewski, D., & Macko, M. (2022). Recent Advances in Bipedal Walking Robots: Review of Gait, Drive, Sensors and Control Systems. Sensors, 22(12), 4440. https://doi.org/10.3390/s22124440