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UK government announces support for next-generation nuclear technologies
8th December 2017 11:41 am
The UK government has unveiled a series of measures aimed at driving growth in the nuclear sector, and positioning the UK as a world-leader in next generation nuclear technologies, including small modular reactors
At the heart of the package is a pledge to provide up to £56m to support r&d into advanced and small modular reactors.
The first stage of this finding package will see £4m made available for feasibility studies and up to £7m to further develop the capability of nuclear regulators who support and assess advanced nuclear technologies. If this goes well, up to £40m will be made available for advanced modular reactor R&D projects and up to a further £5m for regulators. The government also plans to support early access to regulators to build the capability and capacity needed to assess and licence small reactor designs and will establish an expert finance group to advise how small reactor projects could raise private investment in the UK.
In addition, the government plans to shortly launch the second phase of its Nuclear Innovation Programme, including up to £8m for work on modern safety and security methodologies and studies in advanced fuels.
Meanwhile, a further £86m has been earmarked for a new national fusion technology platform at the UK Atomic Energy Authority’s Culham Science Centre in Oxfordshire.
This new investment will reinforce the UK’s world-leading fusion research and development capability, and allow UK firms to compete for up to a further £1bn of international contracts for fusion technologies, including for the International Thermonuclear Experimental Reactor (ITER).
Cutaway view of the ITER tokamak, with the fusion plasma shown in purple
Science minister Jo Johnson said: “This new funding for nuclear fusion research will establish a unique set of research and innovation capabilities that will safeguard the exceptional work already...
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London’s black cabs go electric and Japan embraces autonomy
6th December 2017 11:21 am
Hybrid electric black cabs are officially ready to take to the streets of London, while preparations are underway in Yokohama, Japan for an autonomous e-mobility trial.
After several months of testing, the London EV Company’s (LEVC) TX taxi has been fully certified and can start taking its first passengers. The hybrid vehicle features a battery electric powertrain with a small backup petrol generator. It has an overall range up to 400 miles, with an 80-mile pure electric range. The six-seater cab also features a filter system to remove gases and particles from incoming air, as well as a sensor that closes the external air intake when it detects elevated levels of pollution.
“After extensive testing, LEVC’s new taxi is ready to do the job it was made for: transport people around this great city of London safely, cleanly and stylishly,” said Chris Gubbey, CEO of the LEVC.
“Better for passengers, more cost effective for drivers, it will play a major role in helping to improve air quality benefiting all Londoners. I am immensely proud of the work we have carried out so far: we have produced a new icon, the world’s most advanced electric taxi.”
Built at a brand new production plant near Coventry, the TX came to fruition following the takeover of the London Taxi Company by Chinese automotive giant Geely. To mark the transition to EV production, the name of the business was changed to the London EV Company in July 2017. As well as being cleaner than the black cabs currently on the roads, the TX promises a better passenger experience, with features such as wheelchair accessibility, phone and laptop charging, onboard WiFi and contactless card machines. Safety features include forward collision warnings, autonomous emergency braking and emergency brake assistance
Meanwhile in Japan, a new trial is going a step further than the TX, removing the driver completely and offering...
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Robots given visual foresight to predict their actions
5th December 2017 11:24 am
Researchers have developed visual foresight, a learning technology that enables robots to imagine the outcome of future actions in order to successfully manipulate unfamiliar objects.
Robot gets a grip on the world around it
The technology from the University of California, Berkeley could one day help self-driving cars anticipate future events on the road and produce more intelligent robotic assistants in homes. The initial prototype, however, focuses on learning manual skills entirely from autonomous play.
Using visual foresight, robots can predict what their cameras will see if they perform a particular sequence of movements. These robotic imaginations are still relatively simple for now – predictions made only several seconds into the future – but they are enough for the robot to ascertain
how to move objects around on a table without disturbing obstacles.
The robot can learn to perform these tasks without any help from humans or prior knowledge about physics, its environment or what the objects are. That’s because the visual imagination is learned entirely from scratch from unattended and unsupervised exploration, where the robot plays with objects on a table. After this phase, the robot builds a predictive model of the world, and can use this model to manipulate new objects that it has not seen before.
“In the same way that we can imagine how our actions will move the objects in our environment, this method can enable a robot to visualise how different behaviours will affect the world around it,” said Sergey Levine, assistant professor in Berkeley’s Department of Electrical Engineeing and Computer Sciences, whose lab developed the technology. “This can enable intelligent planning of highly flexible skills in complex real-world situations.”
According to UC Berkeley, a deep learning technology based on convolutional recurrent video prediction – or dynamic neural advection (DNA) – is at the core of the technology.
DNA-based models predict how pixels in an image will move from one frame to the next based on the robot’s actions. Recent improvements to this class of models, as well as greatly improved planning capabilities, have enabled robotic control based on video prediction to perform increasingly complex tasks.
With the new technology, a robot pushes objects on a table, then uses the learned prediction model to choose motions that will move an object to a desired location. Robots use the learned model from raw camera observations to teach themselves how to avoid obstacles and push objects around obstructions.
“Humans learn object manipulation skills without any teacher through millions of interactions with a variety of objects during their lifetime. We have shown that it possible to build a robotic system that also leverages large amounts of autonomously collected data to learn widely applicable manipulation skills, specifically object pushing skills,” said Frederik Ebert, a graduate student in Levine’s lab who worked on the project.
In contrast to conventional computer vision methods, which require humans to manually label numerous images, building video prediction models requires unannotated video, which can be collected by the robot autonomously.
“Children can learn about their world by playing with toys, moving them around, grasping, and so forth. Our aim with this research is to enable a robot to do the same: to learn about how the world works through autonomous interaction,” Levine said.
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The research team is scheduled to perform a demonstration of the visual foresight technology at the Neural Information Processing Systems conference in Long Beach, California, on December 5, 2017.
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New report highlights civil nuclear’s contribution to UK economy
4th December 2017 12:56 pm
Britain’s 65,000 civil nuclear sector employees contributed £6.4bn to the UK economy last year, according to a new report highlighting the sector’s contribution to the nation’s finances.
A final planning decision on EDF’s proposed Hinkley Point C power station in Somerset is expected this year
The study shows also that the economic impact increases to £12.4bn and 155,000 jobs when the sector’s spend on associated goods and services in the supply chain and the wage spend by employees are accounted for.
The report, compiled by Oxford Economics for the Nuclear Industry Association, found that each nuclear sector employee contributes an average of £96,600 in gross value added (GVA) to the ...
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