Page 313 - Big Data Analytics for Connected Vehicles and Smart Cities
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294	         Big	Data	Analytics	for	Connected	Vehicles	and	Smart	Cities

          Use cases (continued)              Variable tolling use case, 164
              purpose of, 157                Variety, big data, 39–40
              smart city transportation examples,   Velocity, big data, 36–39
                 158–61                      Veracity, big data, 42
              summary, 160–61                Video and light detection and ranging
              ticketing strategy and payment channel   (LIDAR) sensors, 67, 69
                 evaluation, 164–65          Video platform, 99
              transportation governance system,   Volume, big data, 35–36
                 168–69
              travel value analysis, 170     What-how cycle methodology, 7
              urban automation analysis, 171  Whoops moment, 120
              variable tolling, 164          Word clouds
          User experience-related questions, 27–29     Chapter 1, 2
          User-focused mobility services         Chapter 2, 14
              analytics, 131                     Chapter 3, 32
              assumed configuration for, 258     Chapter 4, 56
              benefit estimate, 266              Chapter 5, 82
              cost estimate, 253                 Chapter 6, 118
              cost estimation, 245–46            Chapter 7, 138
              portfolio of choices, 91           Chapter 8, 156
              vision element, 84                 Chapter 9, 174
                                                 Chapter 10, 196
          Variability, big data, 40              Chapter 11, 224
          Variable speed limits (VSLs)           Chapter 12, 272
              benefits, 199                      defined, 2
              defined, 198                   Wow moment, 120
              evaluation of, 209
              implementation, 200
              objectives, 199–200
              project, 198–200
              signs, 208
              See also Freeway speed variability
                 analysis
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