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How can an intelligent transport system be used to improve the efficiency of smart card ticketing? 

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An intelligent transport system can improve the efficiency of smart card ticketing by implementing various features. These features include the use of smart card technology to withdraw funds from a passenger's account instead of using direct money transactions, eliminating the need for coin change and reducing issues caused by a lack of change . Additionally, a smart ticketing application can be developed to provide a smooth ticketing experience, showing optimized routes and available seats to passengers. Users without smartphones can still book tickets with the help of conductors, and the generated acknowledgment can act as a digital ticket verified by ticket checkers . Furthermore, the use of an intelligent ticketing system with multiple payment modes can enhance ticket purchasing efficiency for users .

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The provided paper does not mention the use of an intelligent transport system to improve the efficiency of smart card ticketing.
The paper does not provide information on how an intelligent transport system can be used to improve the efficiency of smart card ticketing.
The provided paper does not mention how an intelligent transport system can be used to improve the efficiency of smart card ticketing.
The paper does not provide information on how an intelligent transport system can be used to improve the efficiency of smart card ticketing.

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How intelligent transport system can be used smart card ticketing?5 answersIntelligent transport systems can be used for smart card ticketing by implementing technologies such as Smart Card and Radio Frequency Identification (RFID). These technologies eliminate the need for manual fare collection and paper tickets, providing a more efficient and convenient ticketing experience for passengers. The Smart Card technology allows passengers to obtain tickets by withdrawing funds from their accounts, eliminating the issues caused by a lack of coin change. The RFID system, when integrated with microcontrollers like Arduino Uno and Raspberry Pi, enables passengers to tap their RFID cards against readers when entering and exiting the bus, eliminating the need for paper tickets. These systems also provide additional features such as optimized route suggestions, seat allocation, and cashless payments, enhancing the overall efficiency and convenience of the ticketing process.
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