On behalf of Emanuele, Chai, Poh and myself, I am very happy to announce that in 2018 we will launch a co-supervised PhD program between the Clayton and Sunway sites of Monash Engineering.
The objectives of this co-supervised PhD program are twofold:
a) to provide an opportunity for PhD students to have a genuine international PhD experience by spending time on both sites (in the spirit of the Monash-IITB Academy program), and
b) to foster greater research links between researchers on the two Engineering campuses
The PhD students will be enrolled in Sunway and will nominally spend 2yrs at Sunway and 1yr at Clayton. The preference is for the 2nd yr of candidature to be spent at Clayton (after the students have passed confirmation of candidature) but this is flexible depending on the project needs. The program will be marketed in Malaysia as a premium package and the PhD stipend will be higher than the normal rate during the time in Sunway. During the year in Australia, the candidates will receive the Clayton stipend of 26-27k AUD p/a. The objective is to attract the very best students from Malaysia and abroad to participate. The students must be supervised by at least one supervisor from each site.
The plan is to advertise in Malaysia around mid-2018 with the first intake anticipated to be between Aug-Oct 2018. Five scholarships have been planned in the first instance. The timing has been set in line with the academic year in Malaysia to maximise the chances of recruiting the top students.
Kai joined the research team last November 2017 and today successfully completed his phd confirmation. From now on, he can be called a Monash PhD student!!!
Kai has made a good progress on his research on free-floating car sharing. Good luck with his rest of research journey!!
Papers submitted to TRB 2018 are accepted. The list is following:
Optimal Sitting and Sizing of the Remote Park-and-Ride Scheme in the Multimodal Transport Network” by TRB’s Standing Committee on Transportation Network Modeling (ADB30). – Xinyuan Chen (PhD student)
The bike-sharing service has brought many conveniences to citizens and served as an effective supplement to mass transit system. For docked bike-sharing service, each docking station has the fixed spots to store bikes and stations could be empty or saturated at some time. Bike-sharing operators would redistribute bikes between stations by trucks according to their experiences. It is ineffective for the operation and inconvenient for users to access this service smoothly. There are many studies on short-term forecasting in transportation, such as traffic flow, traffic congestion, traffic speed, passenger flow and more. However, their applications in the field of bike-sharing still remain blank. This paper mainly focuses on the short-term forecasting for docking station usage in a case of Suzhou, China. The widely used methodologies in forecasting are reviewed and compared. After that, two latest and highly efficient models, LSTM and GRU, are adopted to predict the short-term available number of bikes in docking stations with one-month historical data. RF is used to be compered as a benchmark. The predicted results show that LSTM and GRU which derive from RNN and Random Forest achieve good performance with acceptable error and comparative accuracies. Random forest is more advantageous in terms of training time while LSTM with various structures can predict better for long term. The maximum difference between the real data and predicted value is only 1 or 2 bikes, which supports the developed models are practically ready to use.
FIGURE 2 Locations of the stations.
LSTM
The Long short-term memory neural networks (LSTM) is a special kind of recurrent neural networks for the time series prediction (28). As shown in the Figure 4 (a), the LSTM cell can hold and update a state during the training process. Thus, the model makes a prediction with the previous learning experience. The mathematical expressions can be denoted as
where is the current step, is the input, is the output, is the weight matrix, is the bias. , , and are intermediate variables, which decide to remember or forget the input data (29).
Two LSTM layers are used in this paper and the output layer would make a final regression results. Figure 4 (b) shows basic structure of the model as well as the running steps of the LSTM cells. When the continuous input values flow in the LSTM cell, it will unfold and handle these values by sequence as figure 4 (c). After the last one is finished, the cell would make an output result for the next layer.
FIGURE 4 Description of the LSTM model.
GRU
Gated Recurrent Unit (GRU) was introduced in 2014 (30). It’s an improved recurrent neural network based on LSTM. It merges the input part and forgetting part together so the number of the gates from 4 becomes 3. As a result, GRU saves more computational resources than LSTM with similar performance. To compare the difference between LSTM and GRU, we use same network structure as LSTM in figure 3 (b). The main expressions can be indicated by following formulas (29).
The article used LSTM, GRU and Random Forest with a different time interval and sequence length to predict the number of available bikes. A laptop (Windows 10, 16GB RAM, Intel i7-4720HQ, GeForce GTX 960M) completed the whole training tasks. The LSTM and GRU run on top of Keras (31) and Tensorflow (32)with GPU. For the random forest part, it is coded and run with Scikit-learn (33) and CPU.
Time Interval
Sequence Length
Training Time (s) – 25 epochs
Training Time (s) – 1000 estimators
LSTM
GRU
RF
1
5
45.83
37.59
5.31
10
78.15
61.58
13.62
20
143.42
109.05
36.78
30
210.45
160.81
64.77
5
5
14.50
12.08
2.56
10
20.81
16.90
4.35
20
34.47
26.22
8.75
30
47.81
37.37
13.71
10
5
10.82
6.46
1.87
10
13.84
7.45
2.93
20
20.97
9.68
5.32
30
28.19
11.73
7.69
The time interval only has three different levels: 1min, 5mins, and 10mins. Also, the sequence length has four different levels: 5, 10, 20, and 30. As a result, the lines in the graphs are not smooth but broken lines. The main features of these graphs are listed as follows.
The MSE of RF is very good when the time interval is short but with the increase of the time interval, RF gets worse performance than other two. The memory unit in the RNN may help with long interval sequence;
Generally, the results are quite similar with these three models. However, the blue line always higher than others in the graph of GRU and Random Forest, which means station 628 get worse results in those two models. Since 628 station has the larger usage amount, the variation may be higher than others;
All lines get higher with the increase of the time interval. There are two potential reasons may cause this problem. One is that forecasting long time interval is harder. The other one is that the sample size is dramatically decreased when expanding the interval so that the accuracy is affected;
Different sequence lengths do not change much performance of models but sequence lengths affect the results gently and the longer one leads to a better performance in most cases.
LSTM, GRU and Random Forest are all following the trends very well. The difference between the real data and predicted data is less than 1 or 2 bikes. It is good enough to help to develop the bike-sharing management based on these predictions;
The accuracies between the three predictions are very comparative;
LSTM and GRU get similar trends in most of the cases because they might have similar model structures;
When the time interval is short, random forest gets a better performance;
By increasing the sequence length, the fluctuation of three predictions is
I am delighted to announce that Shelley finally is conferred DOCTOR!!! A big congratulation on her great achievement.
Sincere thanks to Xiaoying(Shelley) achieving this wonderful result.
The 17th COTA conference International Conference of Transportation Professionals (CICTP2017) will be held during July 7-9, 2017, in Shanghai, China, jointly organized by Tongji University and Chinese Overseas Transportation Association (COTA). Thank you, my students for attending the conference to make wonderful presentations. I hope to see some of you in Beijing next year again!!!
From left Tian-Qi(PhD), Inhi, Bo, Catherine, Lilian, Xinyuan, Ray and Kai
An interesting layout to discuss among participants.
Perspectives of opening a gated community and its effect by Tian-Qi Gu(PhD)
Analysis of Public Bicycle Sharing Network based on Complex Network Theory by Chunliang Wu (2015)
Kai (PhD)
Social media application for illegal parking problem by Bo Wang(2015)
Understanding road rage Insights from a synthesis of research by Xiaohui Xu (2015)
Modelling asymmetric and non-additive P&R schemes by Xiyuan Chen(2013, Phd) also made good contributions
Our good friend, Terry also makes a presentation regarding big data and its applications
An exclusive reception organised by DiDi
Prof. Keechoo Chio from Ajoo University, South Korea delivers a presentation regarding cutting edge technique in transportation on behalf of Korea Transport Society
Monash university, Institute of Advanced Vehicle technology and JITRI secured research funding of 4 million RMB( AU$ 760,000). The project title is Green Travel Models in Smart Cities: Coordination studies and Integration Platform Project.
The research is led by Dr. Inhi Kim, Prof. Terry Liu from SEU and Prof. Yifan Dai from THU.
This 3 year project, Monash is planning to recruit 4 phd candidates doing research on a variety of sub topics. I look forward to working on this project and making a great impact on traffic problems.
Subtopics are as follows;
Behavior analysis and demand forecasting based on multi-modal green travel
System optimization and resource allocation based on multi-modal green travel
Traffic control and demand management based on multi-modal green travel
induced travel based on traffic big data
Key technologies of cooperative vehicle-infrastructure systems.
A bid congrats. Such a big achievement for your lives. You guys now have just opened a new chapter in your lives. I hope you all have wonderful future. See you soon again.
I thank to Michelle Bao, a Vice-president of CCDI for having a wonderful time with my students, a cohort of 2016. Michelle is one of our Monash associates who supports in many various ways. Giving a lecture is one of annual events. This year, Michelle discussed with the students what industry expects from students. The students have a lot of questions in particularly hiring process in CCDI.