国际米兰对阵科莫 - transport /taxonomy/subjects/transport en 国际米兰对阵科莫 is forging a future for our planet /climate-and-nature <div class="field field-name-field-content-summary field-type-text-with-summary field-label-hidden"><div class="field-items"><div class="field-item even"><p><p>Find out how 国际米兰对阵科莫's pioneering research in climate and nature is regenerating nature, rewiring energy, rethinking transport and redefining economics 鈥 forging a future for our planet.</p> </p></div></div></div> Mon, 21 Oct 2024 09:00:36 +0000 lw355 248511 at How road haulage is navigating the route to net zero /stories/road-to-net-zero <div class="field field-name-field-content-summary field-type-text-with-summary field-label-hidden"><div class="field-items"><div class="field-item even"><p><p>Responsible for 8% of world carbon emissions, can trucking clean up its act?</p> </p></div></div></div> Fri, 11 Oct 2024 13:41:50 +0000 hcf38 248321 at What does it take to make a better battery? /stories/building-a-better-battery <div class="field field-name-field-content-summary field-type-text-with-summary field-label-hidden"><div class="field-items"><div class="field-item even"><p><p>国际米兰对阵科莫 researchers are working to solve one of technology鈥檚 biggest puzzles: how to build next-generation batteries that could power a green revolution.聽</p> </p></div></div></div> Tue, 01 Oct 2024 08:20:28 +0000 lw355 248171 at 360-degree head-up display view could warn drivers of road obstacles in real time /stories/lidar-holograms-for-driving <div class="field field-name-field-content-summary field-type-text-with-summary field-label-hidden"><div class="field-items"><div class="field-item even"><p><p>Researchers have developed an augmented reality head-up display that could improve road safety by displaying potential hazards as high-resolution three-dimensional holograms directly in a driver鈥檚 field of vision in real time.</p> </p></div></div></div> Wed, 20 Dec 2023 06:00:26 +0000 sc604 243851 at Using machine learning to monitor driver 鈥榳orkload鈥 could help improve road safety /research/news/using-machine-learning-to-monitor-driver-workload-could-help-improve-road-safety <div class="field field-name-field-news-image field-type-image field-label-hidden"><div class="field-items"><div class="field-item even"><img class="cam-scale-with-grid" src="/sites/default/files/styles/content-580x288/public/news/research/news/gettyimages-166065769-dp.jpg?itok=Kiajf2DW" alt="Head up display of traffic information and weather as seen by the driver" title="Head up display of traffic information and weather as seen by the driver, Credit: Coneyl Jay via Getty Images" /></div></div></div><div class="field field-name-body field-type-text-with-summary field-label-hidden"><div class="field-items"><div class="field-item even"><p>The researchers, from the 国际米兰对阵科莫, working in partnership with Jaguar Land Rover (JLR) used a combination of on-road experiments and machine learning as well as Bayesian filtering techniques to reliably and continuously measure driver 鈥榳orkload鈥. Driving in an unfamiliar area may translate to a high workload, while a daily commute may mean a lower workload.</p>&#13; &#13; <p>The resulting algorithm is highly adaptable and can respond in near real-time to changes in the driver鈥檚 behaviour and status, road conditions, road type, or driver characteristics.</p>&#13; &#13; <p>This information could then be incorporated into in-vehicle systems such as infotainment and navigation, displays, advanced driver assistance systems (ADAS) and others. Any driver-vehicle interaction can be then customised to prioritise safety and enhance the user experience, delivering adaptive human-machine interactions. For example, drivers are only alerted at times of low workload, so that the driver can keep their full concentration on the road in more stressful driving scenarios. The <a href="https://ieeexplore.ieee.org/document/10244092">results</a> are reported in the journal <em>IEEE Transactions on Intelligent Vehicles</em>.</p>&#13; &#13; <p>鈥淢ore and more data is made available to drivers all the time. However, with increasing levels of driver demand, this can be a major risk factor for road safety,鈥 said co-first author Dr Bashar Ahmad from 国际米兰对阵科莫鈥檚 Department of Engineering. 鈥淭here is a lot of information that a vehicle can make available to the driver, but it鈥檚 not safe or practical to do so unless you know the status of the driver.鈥</p>&#13; &#13; <p>A driver鈥檚 status 鈥 or workload 鈥 can change frequently. Driving in a new area, in heavy traffic or poor road conditions, for example, is usually more demanding than a daily commute.</p>&#13; &#13; <p>鈥淚f you鈥檙e in a demanding driving situation, that would be a bad time for a message to pop up on a screen or a heads-up display,鈥 said Ahmad. 鈥淭he issue for car manufacturers is how to measure how occupied the driver is, and instigate interactions or issue messages or prompts only when the driver is happy to receive them.鈥</p>&#13; &#13; <p>There are algorithms for measuring the levels of driver demand using eye gaze trackers and biometric data from heart rate monitors, but the 国际米兰对阵科莫 researchers wanted to develop an approach that could do the same thing using information that鈥檚 available in any car, specifically driving performance signals such as steering, acceleration and braking data. It should also be able to consume and fuse different unsynchronised data streams that have different update rates, including from biometric sensors if available.</p>&#13; &#13; <p>To measure driver workload, the researchers first developed a modified version of the Peripheral Detection Task to collect, in an automated way, subjective workload information during driving. For the experiment, a phone showing a route on a navigation app was mounted to the car鈥檚 central air vent, next to a small LED ring light that would blink at regular intervals. Participants all followed the same route through a mix of rural, urban and main roads. They were asked to push a finger-worn button whenever the LED light lit up in red and the driver perceived they were in a low workload scenario.</p>&#13; &#13; <p>Video analysis of the experiment, paired with the data from the buttons, allowed the researchers to identify high workload situations, such as busy junctions or a vehicle in front or behind the driver behaving unusually.</p>&#13; &#13; <p>The on-road data was then used to develop and validate a supervised machine learning framework to profile drivers based on the average workload they experience, and an adaptable Bayesian filtering approach for sequentially estimating, in real-time, the driver鈥檚 instantaneous workload, using several driving performance signals including steering and braking. The framework combines macro and micro measures of workload where the former is the driver鈥檚 average workload profile and the latter is the instantaneous one.</p>&#13; &#13; <p>鈥淔or most machine learning applications like this, you would have to train it on a particular driver, but we鈥檝e been able to adapt the models on the go using simple Bayesian filtering techniques,鈥 said Ahmad. 鈥淚t can easily adapt to different road types and conditions, or different drivers using the same car.鈥</p>&#13; &#13; <p>The research was conducted in collaboration with JLR who did the experimental design and the data collection. It was part of a project sponsored by JLR under the CAPE agreement with the 国际米兰对阵科莫.</p>&#13; &#13; <p>鈥淭his research is vital in understanding the impact of our design from a user perspective, so that we can continually improve safety and curate exceptional driving experiences for our clients,鈥 said JLR鈥檚 Senior Technical Specialist of Human Machine Interface Dr Lee Skrypchuk. 鈥淭hese findings will help define how we use intelligent scheduling within our vehicles to ensure drivers receive the right notifications at the most appropriate time, allowing for seamless and effortless journeys.鈥</p>&#13; &#13; <p>The research at 国际米兰对阵科莫 was carried out by a team of researchers from the Signal Processing and Communications Laboratory (SigProC), Department of Engineering, under the supervision of Professor Simon Godsill. It was led by Dr Bashar Ahmad and included Nermin Caber (PhD student at the time) and Dr Jiaming Liang, who all worked on the project while based at 国际米兰对阵科莫鈥檚 Department of Engineering.</p>&#13; &#13; <p>聽</p>&#13; &#13; <p><em><strong>Reference:</strong><br />&#13; Nermin Caber et al. 鈥<a href="https://ieeexplore.ieee.org/document/10244092">Driver Profiling and Bayesian Workload Estimation Using Naturalistic Peripheral Detection Study Data</a>.鈥 IEEE Transactions on Intelligent Vehicles (2023). DOI: 10.1109/TIV.2023.3313419</em></p>&#13; </div></div></div><div class="field field-name-field-content-summary field-type-text-with-summary field-label-hidden"><div class="field-items"><div class="field-item even"><p><p>Researchers have developed an adaptable algorithm that could improve road safety by predicting when drivers are able to safely interact with in-vehicle systems or receive messages, such as traffic alerts, incoming calls or driving directions.</p>&#13; </p></div></div></div><div class="field field-name-field-content-quote field-type-text-long field-label-hidden"><div class="field-items"><div class="field-item even">There is a lot of information that a vehicle can make available to the driver, but it鈥檚 not safe or practical to do so unless you know the status of the driver</div></div></div><div class="field field-name-field-content-quote-name field-type-text field-label-hidden"><div class="field-items"><div class="field-item even">Bashar Ahmad</div></div></div><div class="field field-name-field-image-credit field-type-link-field field-label-hidden"><div class="field-items"><div class="field-item even"><a href="/" target="_blank">Coneyl Jay via Getty Images</a></div></div></div><div class="field field-name-field-image-desctiprion field-type-text field-label-hidden"><div class="field-items"><div class="field-item even">Head up display of traffic information and weather as seen by the driver</div></div></div><div class="field field-name-field-cc-attribute-text field-type-text-long field-label-hidden"><div class="field-items"><div class="field-item even"><p><a href="https://creativecommons.org/licenses/by-nc-sa/4.0/" rel="license"><img alt="Creative Commons License." src="/sites/www.cam.ac.uk/files/inner-images/cc-by-nc-sa-4-license.png" style="border-width: 0px; width: 88px; height: 31px;" /></a><br />&#13; The text in this work is licensed under a <a href="https://creativecommons.org/licenses/by-nc-sa/4.0/">Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License</a>. Images, including our videos, are Copyright 漏国际米兰对阵科莫 and licensors/contributors as identified.聽 All rights reserved. We make our image and video content available in a number of ways 鈥 as here, on our <a href="/">main website</a> under its <a href="/about-this-site/terms-and-conditions">Terms and conditions</a>, and on a <a href="/about-this-site/connect-with-us">range of channels including social media</a> that permit your use and sharing of our content under their respective Terms.</p>&#13; </div></div></div><div class="field field-name-field-show-cc-text field-type-list-boolean field-label-hidden"><div class="field-items"><div class="field-item even">Yes</div></div></div> Thu, 07 Dec 2023 07:48:29 +0000 sc604 243581 at 'Lightning McGreen' and 'Sustainable Hulk' lead 国际米兰对阵科莫 E-bus revolution /news/lightning-mcgreen-and-sustainable-hulk-lead-cambridge-e-bus-revolution <div class="field field-name-field-news-image field-type-image field-label-hidden"><div class="field-items"><div class="field-item even"><img class="cam-scale-with-grid" src="/sites/default/files/styles/content-580x288/public/news/news/roger-birch-bus-naming-award-1.png?itok=R7KQsO4d" alt="Man stands in front of a blue bus" title="Credit: None" /></div></div></div><div class="field field-name-body field-type-text-with-summary field-label-hidden"><div class="field-items"><div class="field-item even"><p>Alongside the two famed children's animation and comic book-inspired characters, the names 'Greenhopper', 'Net-Zero Hero', 'Pollution Solution', 'The Peregreen Falcon', 'Eco Eddie' and 'The Green Clean Machine', were also chosen for the fleet from a selection offered by students from the 国际米兰对阵科莫 Primary School in a bus naming competition.聽</p>&#13; &#13; <p>The competition invited students from the school in the University-built neighbourhood聽of Eddington to unleash their imagination. Participants were encouraged to consider factors such as the sustainability benefits and innovative features of the new buses in their naming choices. This initiative aimed to engage young minds in a fun and educational way, while also contributing to the enhancement of public transport within the local community. 聽</p>&#13; &#13; <p>Over the past few weeks, the competition captured the attention and enthusiasm of a large number of Eddington school children, attracting well over 100 entries. Their creativity and thoughtfulness were truly remarkable, making the selection process a challenging yet enjoyable task for the judging panel.</p>&#13; &#13; <p>The final selection was made by a panel of representatives from the 国际米兰对阵科莫 and Whippet鈥檚 parent company, Ascendal Group. The panel carefully evaluated each entry and assessed the names based on originality, relevance, and the potential to resonate with the local community.</p>&#13; &#13; <p>鈥淲e were overwhelmed by the incredible response from the young participants,鈥 said Nicoletta Gennaro, Ascendal鈥檚 Group Head of Marketing. 鈥淭he names suggested by these talented children were not only impressive but also reflected their deep understanding of our community鈥檚 values and aspirations. We are thrilled to involve them in shaping the identity of our new electric buses.鈥</p>&#13; &#13; <p>Winners of the competition received special recognition at a dedicated award ceremony at the 国际米兰对阵科莫 Primary School, where they received prizes from representatives from Whippet and the University.</p>&#13; &#13; <p>鈥淲e believe that involving the youth in important community projects like this fosters a sense of belonging and ownership,鈥 added Mike Davies, Transport Manager at the 国际米兰对阵科莫. 鈥淭hrough their contribution, we hope to inspire future generations to actively participate in shaping the development of our city and how we move.鈥</p>&#13; &#13; <p>Both Whippet and the 国际米兰对阵科莫 would like to extend their sincere gratitude to all the participating students and staff at the 国际米兰对阵科莫 Primary School for their invaluable contributions to the competition. The event marks a significant milestone in promoting creativity, community engagement, and the importance of sustainable public transport.</p>&#13; </div></div></div><div class="field field-name-field-content-summary field-type-text-with-summary field-label-hidden"><div class="field-items"><div class="field-item even"><p><p>'Lightning McGreen'聽and the 'The Sustainable Hulk' will lead a new fleet of nine electric buses plying routes travelled by students and staff across the 国际米兰对阵科莫 on the Universal bus route, scheduled to be put into service later this year by bus operator Whippet.聽</p>&#13; </p></div></div></div><div class="field field-name-field-cc-attribute-text field-type-text-long field-label-hidden"><div class="field-items"><div class="field-item even"><p><a href="https://creativecommons.org/licenses/by-nc-sa/4.0/" rel="license"><img alt="Creative Commons License." src="/sites/www.cam.ac.uk/files/inner-images/cc-by-nc-sa-4-license.png" style="border-width: 0px; width: 88px; height: 31px;" /></a><br />&#13; The text in this work is licensed under a <a href="https://creativecommons.org/licenses/by-nc-sa/4.0/">Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License</a>. Images, including our videos, are Copyright 漏国际米兰对阵科莫 and licensors/contributors as identified.聽 All rights reserved. We make our image and video content available in a number of ways 鈥 as here, on our <a href="/">main website</a> under its <a href="/about-this-site/terms-and-conditions">Terms and conditions</a>, and on a <a href="/about-this-site/connect-with-us">range of channels including social media</a> that permit your use and sharing of our content under their respective Terms.</p>&#13; </div></div></div><div class="field field-name-field-show-cc-text field-type-list-boolean field-label-hidden"><div class="field-items"><div class="field-item even">Yes</div></div></div> Fri, 16 Jun 2023 14:17:29 +0000 plc32 239971 at London Underground polluted with metallic particles small enough to enter human bloodstrem /stories/london-underground-pollution <div class="field field-name-field-content-summary field-type-text-with-summary field-label-hidden"><div class="field-items"><div class="field-item even"><p><p>The London Underground is polluted with ultrafine metallic particles small enough to end up in the human bloodstream, according to 国际米兰对阵科莫 researchers. These particles are so small that they are likely being underestimated in surveys of pollution in the world鈥檚 oldest metro system.</p> </p></div></div></div> Thu, 15 Dec 2022 15:55:12 +0000 sc604 235991 at Machine learning algorithm predicts how to get the most out of electric vehicle batteries /research/news/machine-learning-algorithm-predicts-how-to-get-the-most-out-of-electric-vehicle-batteries <div class="field field-name-field-news-image field-type-image field-label-hidden"><div class="field-items"><div class="field-item even"><img class="cam-scale-with-grid" src="/sites/default/files/styles/content-580x288/public/news/research/news/car-charging.jpg?itok=BFjKv9sq" alt="People charging their electric cars at charging station" title="People charging their electric cars at charging station in York, Credit: Monty Rakusen via Getty Images" /></div></div></div><div class="field field-name-body field-type-text-with-summary field-label-hidden"><div class="field-items"><div class="field-item even"><p>The researchers, from the 国际米兰对阵科莫, say their algorithm could help drivers, manufacturers and businesses get the most out of the batteries that power electric vehicles by suggesting routes and driving patterns that minimise battery degradation and charging times.</p> <p>The team developed a non-invasive way to probe batteries and get a holistic view of battery health. These results were then fed into a machine learning algorithm that can predict how different driving patterns will affect the future health of the battery.</p> <p>If developed commercially, the algorithm could be used to recommend routes that get drivers from point to point in the shortest time without degrading the battery, for example, or recommend the fastest way to charge the battery without causing it to degrade. The <a href="https://www.nature.com/articles/s41467-022-32422-w">results</a> are reported in the journal <em>Nature Communications</em>.</p> <p>The health of a battery, whether it鈥檚 in a smartphone or a car, is far more complex than a single number on a screen. 鈥淏attery health, like human health, is a multi-dimensional thing, and it can degrade in lots of different ways,鈥 said first author Penelope Jones, from 国际米兰对阵科莫鈥檚 Cavendish Laboratory. 鈥淢ost methods of monitoring battery health assume that a battery is always used in the same way. But that鈥檚 not how we use batteries in real life. If I鈥檓 streaming a TV show on my phone, it鈥檚 going to run down the battery a whole lot faster than if I鈥檓 using it for messaging. It鈥檚 the same with electric cars 鈥 how you drive will affect how the battery degrades.鈥</p> <p>鈥淢ost of us will replace our phones well before the battery degrades to the point that it鈥檚 unusable, but for cars, the batteries need to last for five, ten years or more,鈥 said <a href="https://www.alpha-lee.com/">Dr Alpha Lee</a>, who led the research. 鈥淏attery capacity can change drastically over that time, so we wanted to come up with a better way of checking battery health.鈥</p> <p>The researchers developed a non-invasive probe that sends high-dimensional electrical pulses into a battery and measures the response, providing a series of 鈥榖iomarkers鈥 of battery health. This method is gentle on the battery and doesn鈥檛 cause it to degrade any further.</p> <p>The electrical signals from the battery were converted into a description of the battery鈥檚 state, which was fed into a machine learning algorithm. The algorithm was able to predict how the battery would respond in the next charge-discharge cycle, depending on how quickly the battery was charged and how fast the car would be going the next time it was on the road. Tests with 88 commercial batteries showed that the algorithm did not require any information about previous usage of the battery to make an accurate prediction.</p> <p>The experiment focused on lithium cobalt oxide (LCO) cells, which are widely used in rechargeable batteries, but the method is generalisable across the different types of battery chemistries used in electric vehicles today.</p> <p>鈥淭his method could unlock value in so many parts of the supply chain, whether you鈥檙e a manufacturer, an end user, or a recycler, because it allows us to capture the health of the battery beyond a single number, and because it鈥檚 predictive,鈥 said Lee. 鈥淚t could reduce the time it takes to develop new types of batteries, because we鈥檒l be able to predict how they will degrade under different operating conditions.鈥</p> <p>The researchers say that in addition to manufacturers and drivers, their method could be useful for businesses that operate large fleets of electric vehicles, such as logistics companies. 鈥淭he framework we鈥檝e developed could help companies optimise how they use their vehicles to improve the overall battery life of the fleet,鈥 said Lee. 鈥淭here鈥檚 so much potential with a framework like this.鈥</p> <p>鈥淚t鈥檚 been such an exciting framework to build because it could solve so many of the challenges in the battery field today,鈥 said Jones. 鈥淚t鈥檚 a great time to be involved in the field of battery research, which is so important in helping address climate change by transitioning away from fossil fuels.鈥</p> <p>The researchers are now working with battery manufacturers to accelerate the development of safer, longer-lasting next-generation batteries. They are also exploring how their framework could be used to develop optimal fast charging protocols to reduce electric vehicle charging times without causing degradation.</p> <p>The research was supported by the Winton Programme for the Physics of Sustainability, the Ernest Oppenheimer Fund, The Alan Turing Institute and the Royal Society.</p> <p><br /> <em><strong>Reference:</strong><br /> Penelope K Jones, Ulrich Stimming &amp; Alpha A Lee. 鈥<a href="https://www.nature.com/articles/s41467-022-32422-w">Impedance-based forecasting of lithium-ion battery performance amid uneven usage</a>.鈥 Nature Communications (2022). DOI: 10.1038/s41467-022-32422-w</em></p> <p><em><strong>For more information on聽energy-related research in 国际米兰对阵科莫, please visit聽<a href="https://www.energy.cam.ac.uk/">Energy聽IRC</a>, which brings together 国际米兰对阵科莫鈥檚 research knowledge and expertise, in collaboration with global partners, to create solutions for a sustainable and resilient energy landscape for generations to come.聽</strong></em></p> </div></div></div><div class="field field-name-field-content-summary field-type-text-with-summary field-label-hidden"><div class="field-items"><div class="field-item even"><p><p>Researchers have developed a machine learning algorithm that could help reduce charging times and prolong battery life in electric vehicles by predicting how different driving patterns affect battery performance, improving safety and reliability.</p> </p></div></div></div><div class="field field-name-field-content-quote field-type-text-long field-label-hidden"><div class="field-items"><div class="field-item even">This method could unlock value in so many parts of the supply chain, whether you鈥檙e a manufacturer, an end user, or a recycler, because it allows us to capture the health of the battery beyond a single number</div></div></div><div class="field field-name-field-content-quote-name field-type-text field-label-hidden"><div class="field-items"><div class="field-item even">Alpha Lee</div></div></div><div class="field field-name-field-image-credit field-type-link-field field-label-hidden"><div class="field-items"><div class="field-item even"><a href="https://www.gettyimages.co.uk/detail/photo/york-people-charging-their-electric-cars-at-royalty-free-image/1351964126?adppopup=true" target="_blank">Monty Rakusen via Getty Images</a></div></div></div><div class="field field-name-field-image-desctiprion field-type-text field-label-hidden"><div class="field-items"><div class="field-item even">People charging their electric cars at charging station in York</div></div></div><div class="field field-name-field-cc-attribute-text field-type-text-long field-label-hidden"><div class="field-items"><div class="field-item even"><p><a href="http://creativecommons.org/licenses/by/4.0/" rel="license"><img alt="Creative Commons License" src="https://i.creativecommons.org/l/by/4.0/88x31.png" style="border-width:0" /></a><br /> The text in this work is licensed under a <a href="http://creativecommons.org/licenses/by/4.0/">Creative Commons Attribution 4.0 International License</a>. Images, including our videos, are Copyright 漏国际米兰对阵科莫 and licensors/contributors as identified.聽 All rights reserved. We make our image and video content available in a number of ways 鈥 as here, on our <a href="/">main website</a> under its <a href="/about-this-site/terms-and-conditions">Terms and conditions</a>, and on a <a href="/about-this-site/connect-with-us">range of channels including social media</a> that permit your use and sharing of our content under their respective Terms.</p> </div></div></div><div class="field field-name-field-show-cc-text field-type-list-boolean field-label-hidden"><div class="field-items"><div class="field-item even">Yes</div></div></div> Tue, 23 Aug 2022 09:01:34 +0000 sc604 233851 at