LINE

    Text:AAAPrint
    Sci-tech

    Artificial intelligence may cut plug-in hybrid fuel consumption by one third

    1
    2017-01-21 09:09Xinhua Editor: Feng Shuang ECNS App Download

    Recent studies have shown promising results for making plug-in hybrid electric vehicles (PHEVs) 30% more efficient by combining connected vehicle technology and evolutionary algorithms, a subset of evolutionary computation in artificial intelligence.

    "Maybe in one decade, most of the vehicles on road will be electric and autonomous. The vehicles will be not only 'self-driving' that most people are talking about recently, but also 'self-learning' for its energy management inside the vehicle," Xuewei Qi, the project's lead, told Xinhua on Friday.

    Engineers at the University of California, Riverside (UCR) managed to improve the efficiency of PHEVs by more than 30 percent, according to the latest study, published on the journal IEEE Transactions on Intelligent Transportation Systems.

    "All these abilities are actually existing in the nature, we just borrow the idea from the nature to make our vehicles smarter and more efficient," Qi said.

    PHEVs, which combine a gas or diesel engine with an electric motor and a large rechargeable battery, offer advantages over conventional hybrids because they can be charged using mains electricity, which reduces their need for fuel.

    However, the race to improve the efficiency of current PHEVs is limited by shortfalls in their energy management systems (EMS), which control the power split between engine and battery when they switch from all-electric mode to hybrid mode, according to the research.

    But in reality, drivers may switch routes, traffic can be unpredictable, and road conditions may change, meaning that the EMS must source that information in real-time.

    By combing vehicle connectivity information, such as cellular networks and crowdsourcing platforms, and evolutionary algorithms-a mathematical way to describe natural phenomena such as evolution, insect swarming and bird flocking, Qi and his team developed and simulated the highly efficient EMS.

    The algorithm is intended to solve the long-standing issue of apparent unpredictability on the road.

    "With the increasingly available information in connected vehicle environment, vehicles will be able to improve its energy efficiency by learning from the historical driving behaviors and evolving itself by adapting to the changing driving behaviors," Qi said.

    The current paper builds on previous work by the team showing that individual vehicles can learn how to save fuel from their own historical driving records.

    Together with the application of evolutionary algorithms, vehicles will not only learn and optimise their own energy efficiency, but will also share their knowledge with other vehicles in the same traffic network through connected vehicle technology.

    According to researchers, the series of research is trying to revolutionize the energy management of PHEVs by taking advantage of smart algorithms that are inspired by the natural evolutionary process and natural learning process.

    This is just first step. "I am trying to covert the proposed EMS model for PHEV into a EV version by considering the unique characteristics of EVs, such as the regenerative braking which can collect energy from deceleration," Qi said.

      

    Related news

    MorePhoto

    Most popular in 24h

    MoreTop news

    MoreVideo

    News
    Politics
    Business
    Society
    Culture
    Military
    Sci-tech
    Entertainment
    Sports
    Odd
    Features
    Biz
    Economy
    Travel
    Travel News
    Travel Types
    Events
    Food
    Hotel
    Bar & Club
    Architecture
    Gallery
    Photo
    CNS Photo
    Video
    Video
    Learning Chinese
    Learn About China
    Social Chinese
    Business Chinese
    Buzz Words
    Bilingual
    Resources
    ECNS Wire
    Special Coverage
    Infographics
    Voices
    LINE
    Back to top Links | About Us | Jobs | Contact Us | Privacy Policy
    Copyright ©1999-2018 Chinanews.com. All rights reserved.
    Reproduction in whole or in part without permission is prohibited.
    主站蜘蛛池模板: 大足县| 密云县| 监利县| 蚌埠市| 长葛市| 石台县| 武川县| 连州市| 玉龙| 客服| 龙江县| 余庆县| 池州市| 大冶市| 镇巴县| 太和县| 齐河县| 禄丰县| 峨山| 聂拉木县| 朔州市| 定兴县| 盐城市| 阜新| 夹江县| 定远县| 容城县| 成武县| 长岛县| 元阳县| 潜山县| 墨江| 武夷山市| 隆德县| 云和县| 龙州县| 余庆县| 彩票| 清河县| 武平县| 防城港市|