Intelligent Elevator Safety Detection System Based on Cloud
Service Big Data
Su Zhengpeng
1
, Zhang Zehui
1
, Xie Jiaping
1
, Tao Fei
1
, Weng Yuejia
1
and Zhao Zhongwei
1
1
School of Information and Electronic Engineering, Zhejiang Gongshang University
,
Hangzhou,China
Keywords: Elevator detection, Big Data, C4.5 algorithm
Abstract: Elevator safety accidents often occur in people's daily lives. It is very important to perform 24-hour real-time
testing of elevators in daily operation. This paper proposes a smart elevator security detection system based on
cloud server distributed architecture and big data algorithm technology to solve the problem of elevator
security detection. The C4.5 algorithm can process incomplete data with high accuracy, and can quickly
analyze the operation of the elevator, which is convenient for maintenance personnel to quickly repair and
protect people's safety.
1 INTRODUCTION
As a special equipment for mechatronics, elevators
are inextricably linked with people's daily lives. For
high-rise buildings, the use of elevators as a means of
transportation greatly facilitates people's travel,
saving time and improving the efficiency of office
and life. While the elevator brings convenience to
people's work and life, like other special equipments,
its safe and reliable operation and hidden dangers
also attract people's attention. In the event of an
accident, it is easy to cause casualties and affect
public safety (Park and Yang,2010) (Hang and Guo-jun,
2012) (Xu and Zhao, 2014).
At present, the following treatment process is
often used for the troubleshooting of elevators: when
the elevator fails or an accident occurs, the elevator
owner or the property department makes a request to
the elevator maintenance department, and then the
maintenance personnel arrive at the scene to
troubleshoot, and the handling of the accident lags
behind.With the development of the Internet of
Things technology, the remote monitoring and
diagnosis system of the elevator will provide
guidance and support for the maintenance personnel
to eliminate the fault in the first time(Niu,Lee and
Yang,2018)(Ertuğrul Durak and Yurtseven,2016). Remote
Elevator Monitoring System (REMS) refers to the
remote monitoring, data management, maintenance,
statistics, analysis, fault alarm and rescue of multiple
elevators installed in a building in a certain
area(Lu ,Wang and Liu,2018)(Pisani and
Zucco,2018)(Katakura and Kuroda,2015)(Jin, Zhao and
Ji,2018). However, today's elevator remote
monitoring systems have more or less defects, such as:
the failure analysis of the elevator is not in place, the
maintenance is inconvenient, the test results are not
stored, and it is not convenient for personnel to check.
This paper proposes a new type of elevator
detection scheme, which is improved on the basis of
the elevator remote monitoring system.
Large-capacity data storage, cloud servers and smart
interconnects enable the system to analyze elevator
operation problems from large amounts of data while
processing big data, so that maintenance personnel
can prescribe the right medicine. The rapid analysis
and processing of the information enables rapid
response when the elevator fails, and timely feedback
to the computer, so that the maintenance personnel
can repair the elevator in the shortest time. The
detection system consists of front-end sensor
detection terminals, cloud servers, big data
recognition and analysis algorithms. Once the
elevator runs out of problems, the server or
maintenance enterprise manager will feedback the
results to the elevator maintenance engineer for the
first time, which will help the elevator repair to
quickly reflect and repair (Yi and Zhang,2018)(Crespo,
Kaczmarczyk and Picton,2018)(Sun,2017).
Zhengpeng, S., Zehui, Z., Jiaping, X., Fei, T., Yuejia, W. and Zhongwei, Z.
Intelligent Elevator Safety Detection System Based on Cloud Service Big Data.
DOI: 10.5220/0008097702510256
In Proceedings of the International Conference on Advances in Computer Technology, Information Science and Communications (CTISC 2019), pages 251-256
ISBN: 978-989-758-357-5
Copyright
c
2019 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
251
2 SYSTEM IMPLEMENTATION
PRINCIPLE
2.1 Program Function Block Diagram
Figure 1 is a schematic diagram of the structure of the
intelligent remote elevator monitoring system.
Figure 1: Schematic diagram of structure.
The system uses a speed sensor,a sound sensor,a
frequency sensor,a light level layer sensor, and a
current sensor as terminal data acquisition devices.
Use Arduino to process the collected data and send
the data to the cloud via arduino's wifi module. The
C4.5 algorithm is used to analyze the data transmitted
to the cloud, predict whether the elevator is faulty and
the cause of the failure, and transmit the elevator to
the maintenance department and the elevator
manufacturer.
The following figure is a big data algorithm
topology of the big data detection system:
Figure 2: Big data algorithm topology.
2.2 Algorithm Principle
The specific calculation process of the algorithm is as
follows:
Below we set:
(1) Acceleration(Ac)(m/s2): Ac > 1.5 is high,
0.9 < Ac < 1.5 is medium, Ac < 0.9 is low.
(2) LevelingAccuracy(LA)(mm): |LA| > 15 is
high, 10 < |LA| < 15 is medium, |LA| < 10 is low.
(3) UpstreamCurrent(UC)(A): UC > 11 is high,
9 < UC < 11 is medium, UC < 9 is low.
(4) VibrationFrequency(VF)(Hz) VF>10k is
high,1000<VF<10k is medium,VF<1000 is low.
(5) RunningNoise(RN)(dB) RN > 50 is high, 20
< RN < 50 is medium, RN < 20 is low.
(6) Classification(Cla): 1.circuit failure;
2.chain failure; 3.engine failure; 4.runner failure; 5.
no fault;
We did a series of experiments, the experimental
data shows the fault category statistics when different
variables are used. And the data table is placed in the
appendix. And we’ll use C4.5 algorithm to calculate
the data and draw the decision tree.
1. Computing the Information Entropy:
S1(circuit failure) = 446,
S2(chain failure) = 331,
S3(engine failure) = 2977,
S4(runner failure) = 1363,
S5(no fault) = 1087,
S = S1 + S2 + S3 + S4 + S5 = 6204
Info(D) = 

 

= 1.9251
2. Computing the Information Entropy of Each
Attribute:
Info(UpstreamC urrent -h igh) = 1.6223
Info(UpstreamC urrent -medium) = 1.8478
Info(UpstreamC urrent -low) = 1.5399
Info(UpstreamC urrent )
= 2145/6204 * Info(UpstreamCurrent-high) +
1663/6204 * Info(UpstreamC urrent-medium) +
2396/6204 * Info(UpstreamCurrent-low)
= 1.6510
3. Computing the Information Gain:
Gain(UpstreamCurrent)
= Info(D) Info(UpstreamCurrent) = 0.2755
4. Computing the Attribute Splitting Information
Measure:
H(UpstreamCurrent) = 1.5690
5. Computing the Information Gain Ratio:
IGR(Upstrea mCu rrent)
=Gain(UpstreamCurrent) /
H(UpstreamC urrent)
= 0.2755 / 1.5690
= 0.1756
Similarly, we can compute the IGR of other
attributes:
IGR(Acceleration) = 0.1635
IGR(VibrationFrequency) = 0.1534
IGR(RunningNoise) = 0.1265
IGR(Upstrea mCu rrent) = 0.1383
Based on the above calculation results, we can set
UpstreamCurrentas the root node of the decision
CTISC 2019 - International Conference on Advances in Computer Technology, Information Science and Communications
252
tree. Similarly, we can calculate and get all the leaf
nodes. And the final decision tree is as follows:
Figure 3: Decision tree.
1. By taking the measured data of the sensor into the
tree for analysis and comparison, it is possible to
predict the cause of the elevator failure.
3 ANALYSIS OF RESULTS
The system establishes the simulation environment
through MATLAB, and uses C4.5 algorithm and ID3
algorithm to test in the elevator load range. In the
simulation test, the actual load of the elevator is no
load, load 50%, load 70%, load 100%, and the
remaining variables are controlled to obtain the
following data:
Table 1: Data from simulation experiments.
It can be seen from the test data that within the
load range, the prediction of the C4.5 algorithm has
little error with the actual situation, and the error rate
is lower than that predicted by the ID3 algorithm,
which also indicates that the system is very good in
practical application. Performance. The following
figure shows the MATLAB simulation speed, uplink
current, and leveling accuracy.
Figure 4: Speed simulation diagram.
Figure 5: Uplink current simulation diagram.
Figure 6: Naughty precision simulation.
Intelligent Elevator Safety Detection System Based on Cloud Service Big Data
253
Figure 7: Vibration frequency simulation diagram.
Figure 8: Running noise simulation diagram.
It can be concluded from the simulation diagram
that the average acceleration of the elevator is
1.25m/s2, the upstream current is 8.3A, the leveling
accuracy is 16.7mm, the vibration frequency is
9900Hz, and the running noise is 51dB. It can be
obtained from data analysis, and the elevator has
runner failure.
4 CONCLUSIONS
With the wide application of elevators, elevator use
units should continuously strengthen the detection of
elevators in accordance with the actual situation,
eliminate various problems and hidden dangers in the
operation of elevators, avoid more safety accidents,
and ensure the personal safety of passengers. The
system detects whether there is a fault in the elevator
from the acceleration of the elevator running, the
displacement of the car and the current when the
elevator is running, and reflects the situation of the
elevator to the terminal of the maintenance
department in real time, reducing the detection of
manpower, and the safety of the elevator is improved.
ACKNOWLEDGEMENTS
National Undergraduate Training Program on
Innovation and Entrepreneurship201810353035
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