Archive 20.08.2022

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Why Should Businesses Outsource Payroll?

Payroll processing is something that every business owner or manager has to deal with. No matter the kind of sector you work in or the size of the team you manage, payroll cannot be avoided, and this is an important aspect of your business finances.  This process relates to salary information and payments, which can...

The post Why Should Businesses Outsource Payroll? appeared first on 1redDrop.

Aquabots: Ultrasoft liquid robots for biomedical and environmental applications

In recent years, roboticists have developed a wide variety of robotic systems with different body structures and capabilities. Most of these robots are either made of hard materials, such as metals, or soft materials, such as silicon and rubbery materials.

Debrief: The Reddit Robotics Showcase 2022

Once again the global robotics community rallied to provide a unique opportunity for amateurs and hobbyists to share their robotics projects alongside academics and industry professionals. Below are the recorded sessions of this year.

Industrial / Automation
Keynote “Matt Whelan (Ocado Technology) – The Ocado 600 Series Robot”

  • Nye Mech Works (HAPPA) – Real Power Armor
  • 3D Printed 6-Axis Robot Arm
  • Vasily Morzhakov (Rembrain) – Cloud Platform for Smart Robotics


Mobile Robots

Keynote “Prof. Marc Hanheide (Lincoln Centre for Autonomous Systems) – Mobile Robots in the Wild”

  • Julius Sustarevas – Armstone: Autonomous Mobile 3D Printer
  • Camera Controller Hexapod & Screw/Augur All-Terrain Robot
  • Keegan Neave – NE-Five
  • Dimitar – Gravis and Ricardo *Kamal Carter – Aim-Hack Robot
  • Calvin – BeBOT Real Time


Bio-Inspired Robots

Keynote “Dr. Matteo Russo (Rolls-Royce UTC in Manufacturing and On-Wing Technology) – Entering the Maze: Snake-Like Robots from Aerospace to Industry”

  • Colin MacKenzie – Humanoid, Hexapod, and Legged Robot Control
  • Halid Yildirim – Design of a Modular Quadruped Robot Dog
  • Jakub Bartoszek – Honey Badger Quadruped
  • Lutz Freitag – 01. RFC Berlin
  • Hamburg Bit-Bots
  • William Kerber – Human Mode Robotics – Lynx Quadruped and AI Training
  • Sanjeev Hegde – Juggernaut


Human Robot Interaction

Dr. Ruth Aylett (The National Robotarium) – Social Agents and Human Robot Interaction”

  • Nathan Boyd – Developing humanoids for general purpose applications
  • Hand Controlled Artificial Hand
  • Ethan Fowler & Rich Walker – The Shadow Robot Company
  • Maël Abril – 6 Axis Dynamixel Robot Arm
  • Laura Smith (Tentacular) – Interactive Robotic Art

Thanks sincerely on behalf of the RRS22 committee to every applicant, participant, and audience member who took to time to share their passion for robotics. We wish you all the best in your robotics endeavors.

As a volunteer run endeavour in it’s second year, there is still plenty of room for improvement. On reflection, this year’s event had greater enthusiasm and participation from the community, despite a smaller audience during the livestream. The RRS committee is aware of this, and will be making strategy changes to ensure that RRS2023 justifies the effort put in by everyone. I will note that the positive feedback this year has been wonderful, a few people went out of their way to express how much they enjoyed this year’s event, the variety of speakers and the passion of the community. We’re confident that next year’s event we will be able to iron out the kinks and run a brilliant event for an audience worthy of the talent on display.

Discovering when an agent is present in a system

We want to build safe, aligned artificial general intelligence (AGI) systems that pursue the intended goals of its designers. Causal influence diagrams (CIDs) are a way to model decision-making situations that allow us to reason about agent incentives. By relating training setups to the incentives that shape agent behaviour, CIDs help illuminate potential risks before training an agent and can inspire better agent designs. But how do we know when a CID is an accurate model of a training setup?

Discovering when an agent is present in a system

We want to build safe, aligned artificial general intelligence (AGI) systems that pursue the intended goals of its designers. Causal influence diagrams (CIDs) are a way to model decision-making situations that allow us to reason about agent incentives. By relating training setups to the incentives that shape agent behaviour, CIDs help illuminate potential risks before training an agent and can inspire better agent designs. But how do we know when a CID is an accurate model of a training setup?

MassRobotics, Festo, Mitsubishi Electric Automation, MITRE and Novanta Join Efforts to Support Healthcare Robotics Startups

The program focuses on startups in the areas of clinical care, public safety, laboratory, supply chain automation, out-of-hospital care, and quality of life. It also addresses continuity of work and education, as well as training and support for healthcare professionals.

Objective evaluation of mechanical expressiveness in android and human faces

A scientist from the Graduate School of Engineering at Osaka University proposed a numerical scale to quantify the expressiveness of robotic android faces. By focusing on the range of deformation of the face instead of the number of mechanical actuators, the new system can more accurately measure how much robots are able to mimic actual human emotions. This work, published in Advanced Robotics, may help develop more lifelike robots that can rapidly convey information.

Using tactile sensors and machine learning to improve how robots manipulate fabrics

In recent years, roboticists have been trying to improve how robots interact with different objects found in real-world settings. While some of their efforts yielded promising results, the manipulation skills of most existing robotic systems still lag behinds those of humans.

New programmable materials can sense their own movements

This image shows 3D-printed crystalline lattice structures with air-filled channels, known as “fluidic sensors,” embedded into the structures (the indents on the middle of lattices are the outlet holes of the sensors.) These air channels let the researchers measure how much force the lattices experience when they are compressed or flattened. Image: Courtesy of the researchers, edited by MIT News

By Adam Zewe | MIT News Office

MIT researchers have developed a method for 3D printing materials with tunable mechanical properties, that sense how they are moving and interacting with the environment. The researchers create these sensing structures using just one material and a single run on a 3D printer.

To accomplish this, the researchers began with 3D-printed lattice materials and incorporated networks of air-filled channels into the structure during the printing process. By measuring how the pressure changes within these channels when the structure is squeezed, bent, or stretched, engineers can receive feedback on how the material is moving.

The method opens opportunities for embedding sensors within architected materials, a class of materials whose mechanical properties are programmed through form and composition. Controlling the geometry of features in architected materials alters their mechanical properties, such as stiffness or toughness. For instance, in cellular structures like the lattices the researchers print, a denser network of cells makes a stiffer structure.

This technique could someday be used to create flexible soft robots with embedded sensors that enable the robots to understand their posture and movements. It might also be used to produce wearable smart devices that provide feedback on how a person is moving or interacting with their environment.

“The idea with this work is that we can take any material that can be 3D-printed and have a simple way to route channels throughout it so we can get sensorization with structure. And if you use really complex materials, then you can have motion, perception, and structure all in one,” says co-lead author Lillian Chin, a graduate student in the MIT Computer Science and Artificial Intelligence Laboratory (CSAIL).

Joining Chin on the paper are co-lead author Ryan Truby, a former CSAIL postdoc who is now as assistant professor at Northwestern University; Annan Zhang, a CSAIL graduate student; and senior author Daniela Rus, the Andrew and Erna Viterbi Professor of Electrical Engineering and Computer Science and director of CSAIL. The paper is published today in Science Advances.

Architected materials

The researchers focused their efforts on lattices, a type of “architected material,” which exhibits customizable mechanical properties based solely on its geometry. For instance, changing the size or shape of cells in the lattice makes the material more or less flexible.

While architected materials can exhibit unique properties, integrating sensors within them is challenging given the materials’ often sparse, complex shapes. Placing sensors on the outside of the material is typically a simpler strategy than embedding sensors within the material. However, when sensors are placed on the outside, the feedback they provide may not provide a complete description of how the material is deforming or moving.

Instead, the researchers used 3D printing to incorporate air-filled channels directly into the struts that form the lattice. When the structure is moved or squeezed, those channels deform and the volume of air inside changes. The researchers can measure the corresponding change in pressure with an off-the-shelf pressure sensor, which gives feedback on how the material is deforming.

Because they are incorporated into the material, these “fluidic sensors” offer advantages over conventional sensor materials.

This image shows a soft robotic finger made from two cylinders comprised of a new class of materials known as handed shearing auxetics (HSAs), which bend and rotate. Air-filled channels embedded within the HSA structure connect to pressure sensors (pile of chips in the foreground), which actively measure the pressure change of these “fluidic sensors.” Image: Courtesy of the researchers

“Sensorizing” structures

The researchers incorporate channels into the structure using digital light processing 3D printing. In this method, the structure is drawn out of a pool of resin and hardened into a precise shape using projected light. An image is projected onto the wet resin and areas struck by the light are cured.

But as the process continues, the resin remains stuck inside the sensor channels. The researchers had to remove excess resin before it was cured, using a mix of pressurized air, vacuum, and intricate cleaning.

They used this process to create several lattice structures and demonstrated how the air-filled channels generated clear feedback when the structures were squeezed and bent.

“Importantly, we only use one material to 3D print our sensorized structures. We bypass the limitations of other multimaterial 3D printing and fabrication methods that are typically considered for patterning similar materials,” says Truby.

Building off these results, they also incorporated sensors into a new class of materials developed for motorized soft robots known as handed shearing auxetics, or HSAs. HSAs can be twisted and stretched simultaneously, which enables them to be used as effective soft robotic actuators. But they are difficult to “sensorize” because of their complex forms.

They 3D printed an HSA soft robot capable of several movements, including bending, twisting, and elongating. They ran the robot through a series of movements for more than 18 hours and used the sensor data to train a neural network that could accurately predict the robot’s motion. 

Chin was impressed by the results — the fluidic sensors were so accurate she had difficulty distinguishing between the signals the researchers sent to the motors and the data that came back from the sensors.

“Materials scientists have been working hard to optimize architected materials for functionality. This seems like a simple, yet really powerful idea to connect what those researchers have been doing with this realm of perception. As soon as we add sensing, then roboticists like me can come in and use this as an active material, not just a passive one,” she says.

“Sensorizing soft robots with continuous skin-like sensors has been an open challenge in the field. This new method provides accurate proprioceptive capabilities for soft robots and opens the door for exploring the world through touch,” says Rus.

In the future, the researchers look forward to finding new applications for this technique, such as creating novel human-machine interfaces or soft devices that have sensing capabilities within the internal structure. Chin is also interested in utilizing machine learning to push the boundaries of tactile sensing for robotics.

“The use of additive manufacturing for directly building robots is attractive. It allows for the complexity I believe is required for generally adaptive systems,” says Robert Shepherd, associate professor at the Sibley School of Mechanical and Aerospace Engineering at Cornell University, who was not involved with this work. “By using the same 3D printing process to build the form, mechanism, and sensing arrays, their process will significantly contribute to researcher’s aiming to build complex robots simply.”

This research was supported, in part, by the National Science Foundation, the Schmidt Science Fellows Program in partnership with the Rhodes Trust, an NSF Graduate Fellowship, and the Fannie and John Hertz Foundation.

The Wheelbot: A symmetric unicycle with jumping reaction wheels

Researchers at RWTH Aachen University in the team of Prof. Sebastian Trimpe and the Max Planck Institute for Intelligent Systems (MPI-IS) Stuttgart have recently developed the Wheelbot a symmetric reaction wheel unicycle that can autonomously jump onto its wheels from any initial position. This unique robot, introduced in a paper published in the IEEE Robotics and Automation Letters was fabricated using a combination of off-the-shelf and 3D printed components.
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