Smart Street Light Control: A Review on Methods, Innovations, and Extended Applications
Abstract
:1. Introduction
1.1. Scope of This Paper
1.2. Related Surveys
2. Hardware Related Components to Streetlamps
2.1. Used Lamps Technologies in Streetlights
2.2. Sensor Overview
- Traffic sensors can be categorized into intrusive and non-intrusive types. These sensors allow traffic count, speed measurement, and even traffic classification. Non-intrusive sensors such as active IR emit infrared beams to monitor traffic, counting each interruption of the beam as a vehicle passes. Light-dependent resistors (LDRs), photodiodes and passive infrared (PIR) sensors detect traffic by responding to changes in light intensity or infrared radiation. Doppler-based sensors, like radar, ultrasonic, or LiDAR, can detect vehicles and determine their speeds. Video sensors on the other hand can cover a wide area to detect, count and classify road users through image processing. Intrusive sensors include inductive loops, and piezoelectric sensors which can identify and differentiate various road users based on the applied pressure.
- The light sensor in a SSL system measures ambient light, assesses SL degradation, and can serve as closed-loop feedback to the controller for system optimization. Cost-effective light sensors like LDRs, photodiodes, and phototransistors detect light changes and measure illuminance, which represents the amount of light falling on a surface area. Lux meters are specialized instruments for precise illuminance measurements. Some applications use photo-voltaic (PV) panels, but they are less common due to their lower resolution, and response time compared to photodiodes. Cameras, particularly CCD cameras due to their high sensitivity, can extract various types of information including luminance, representing the reflected light intensity as perceived by the human eye. Some applications even utilize low-resolution cameras as lux meters, employing a series of image processing and calibration techniques [26].
- Power metering sensors in SSL control, such as current, voltage, wattmeters and so on, enable fault detection like short circuits or voltage fluctuations. Regular assessment of these power parameters ensures accurate billing for energy usage and system reliability.
- Environmental sensors equipped on SLs enable adaptive lighting control in response to various weather conditions and can also serve as urban weather and pollution monitors. These sensors include devices for measuring temperature, rain, humidity, and air quality, such as carbon monoxide (CO) and nitrogen monoxide detectors, among others.
3. Lighting Profiles
- Conventional scheme: this is the conventional method where SLs are switched fully ON during sunset, and switched OFF during sunrise, usually by the means of an astronomical clock. The lighting level stays at its maximum during the whole night.
- Part night: in this lighting category, streetlights are programmed to operate at predefined lighting levels during designated periods of the night. The lamps can be fully turned ON or OFF [27], or set to a specific lighting level as depicted in Figure 2c. This schedule is often determined by either prevailing traffic conditions or the unique requirements of certain locations or applications. For example, in rural areas, parks, or highways with low traffic volume during the night, a modified schedule may be implemented. Another example is how UK city councils sometimes adopt part-night lighting systems, particularly in residential areas, to optimize energy usage and meet local needs [28].
- Two steps control: in this category, the lighting level is altered between two predetermined states: either ON and OFF, or between a high and low brightness level as shown in Figure 3a. The ON/OFF method is suitable for non-dimmable lamps, provided that the warm-up time is respected [29]. While this approach offers the most significant energy savings by eliminating electricity consumption, it also negates the primary purpose of SLs: enhancing safety and enabling nocturnal activities. Additionally, the abrupt transition from ON to OFF may look unusual to road users. In contrast, maintaining a low light level ensures the uninterrupted operation of various road services at night, such as surveillance cameras, while preserving a city’s aesthetic appeal. This two-state control system has several benefits, including less complex control mechanisms and no significant reduction in lamp lifespan, as only two lighting levels are used [30].
- Class or step dimming: this scheme adjusts light intensity based on predefined steps or road lighting classes. In the literature, authors may describe light levels in terms of brightness or dimming percentages Figure 3b. These percentages can either correspond to arbitrarily predefined steps or to specific, standardized lighting classes. These classes are determined based on factors such as road type, speed limit, and surrounding area. Three common lighting classes are M for motorists, P for pedestrians, and C for conflict areas. Before the introduction of the CIE 115:2010 standard [31], these classes were determined subjectively. However, CIE 115:2010 revolutionized the calculation of lighting classes by introducing adaptive lighting and an arithmetic approach for quantifying lighting parameters. Subsequent standards, such as CEN/TR 13201-1:2014 [32], have adopted the CIE 115:2010 framework to simplify lighting classes and improve efficiency. It is worth noting that changes in light levels typically occur within sub-classes rather than between different classes. For instance, a change from subclass M5 to M6 could occur if a time-dependent lighting parameter changes.
- Freely controlled: several works in the literature employ imprecise dimming levels to adjust the luminosity of SLs, without considering road type or regulatory guidelines. This approach allows for stepless lighting adjustments, usually calculated based on a range of lighting parameters. While energy-efficient, the practical utility of this scheme is often questioned due to its imprecise lower bound for illumination. In certain scenarios, the dimming level may be so low that the lamp appears nonfunctional. However, recent developments have addressed this issue. For example, a study by Neveen et al. [33] introduced a continuous lighting range that spans from the lowest to the highest sub-lighting class categories. This modified algorithm outputs lighting class values on a continuous scale, rather than in discrete steps. As a result, it ensures adequate illumination by adhering to the minimum levels prescribed by regulations.
- Correlated Color Temperature (CCT) control: this control method refers to the ability to adjust the color appearance of a light source, measured in Kelvins (K), to suit specific lighting conditions. The CCT of a light source not only influences visual comfort and color perception but also can affect human circadian rhythms. Lower CCT values, typically between 3000 K and 4000 K, are recommended for residential areas as they create a warm atmosphere and improve visibility in foggy conditions as shown in Figure 2d. Studies suggest that lower CCTs offer longer visibility distances [34], and better dark adaptation [25], and are less likely to contribute to light pollution. However, they may result in a lower Color Rendering Index (CRI). Conversely, higher CCT values, ranging from 5000 K to 6000 K, are suggested for roadways and outdoor areas as they enhance visibility and safety [35], especially in clear conditions, and can improve facial recognition and facilitate nighttime activities [36]. Despite these benefits, high CCT values can increase glare and light pollution. This method of control is still under development and research to optimize both performance and energy efficiency in lighting systems.
- Group or individual control: this method offers two approaches for adjusting the luminosity of SLs. Individual control allows for the adjustment of each lamp’s brightness irrespective of the state of other lamps. This scheme is particularly useful for spatial alterations of ON and OFF states, as demonstrated by Chung et al. [37] for example, every second or third lamp in a sequence may be turned OFF. While energy-efficient to some extent, this approach can result in uneven light distribution, causing dark patches on the road. Conversely, group control involves adjusting a set of lamps simultaneously, either uniformly or with varying light levels. This ensures a more consistent light distribution or smoother light transitions across a specific section of the roadway. A ‘section’ refers to a portion of a roadway with similar characteristics, such as road width and the number of lanes, as defined in EN 13201 [32]. Separate lane control is a form of group control, as it involves adjusting lamps in each lane based on its distinct characteristics.
- Zoning (surrounding dimming profile): given that the primary users of roads are moving objects, namely pedestrians and motorists, several experiments have employed a moving light system that adapts to the pathway of the road user.
4. Static Control Methods
5. Dynamic Control
5.1. Simple Rule-Based Control
5.2. Web-Based Control
5.3. Control Strategies for Building-Adjacent Lamps
5.4. Traffic-Based Control
- Simple traffic count
- Parametric and non-parametric traffic models
5.5. Zoning-Based Control
5.6. Cost-Effective Optimization Control
5.7. Camera-Based Control
Paper | Energy Source | Used Sensors | Used Lamps | System Implementation | Dimming Profile | Energy Savings |
---|---|---|---|---|---|---|
[111] | Grid | IP camera | LED | University campus | Two steps | Unspecified |
[110] | Grid | Camera | Not specified but since it is 20% min then LED lamps | Simulations | Step dimming | Up to 68% |
[115] | Grid | Motion; camera; weather sensors; | LED | Real implementation | Step dimming + group control | 80% against HPS with no control and 70% against LED lamps |
[113] | Grid | Thermal camera | RGB LED lamps | Real implementation | Zoning + freely controlled + group control | 90% |
[117] | Grid | Ultrasonic; LDR; PIR | LED | Simulation | Step dimming | Unspecified |
[116] | Solar PV | LDR; camera; PIR | LED | Simulation | Two steps + group control + zoning | 86% |
[112] | Solar PV | Camera; illuminance; rain; temperature; humidity | LED | Prototype installed in an intersection | Step dimming + part night | 36% |
[118] | Grid and solar PV | LDR; infrared camera | LED and HPS | Laboratory tests and simulations | Step dimming + group control | 30% |
[68] | Grid | Camera | LED | Prototype | Zoning + two steps | Unspecified |
[109] | Grid | Camera | LED | Implemented in a US military base | Two steps + group control | 90% energy savings vs. uncontrolled HPS lamps |
5.8. User-Driven Control
5.9. Artificial Intelligence-Based Control
5.9.1. Artificial Neural Networks and Deep Learning
5.9.2. Fuzzy Logic Controller
5.9.3. Multi-Agent Systems-Based Control
5.9.4. Control Based on Other AI Models
6. Miscellaneous Functions
- Streetlamps and Connectivity
- -
- WiFi hotspot: SL as Wi-Fi hotspots provide essential internet access and enhance urban connectivity. This transformation aligns with the shift towards smart city development, where Wi-Fi-enabled SLs can serve as integral components of a city’s digital infrastructure. Various studies in the literature highlight the potential of SLs as Wi-Fi hotspots [137,171].
- -
- 5G or Beyond5G/6G: SLs play a key role in integrating 5G and 6G networks within smart cities, aiding the high-density base station requirements of these technologies [13]. By leveraging existing SL infrastructure, including 5G/6G femtocell connectivity for green highway management [14], cities can achieve an optimal solution for network deployment. This approach ensures comprehensive coverage, minimizes signal gaps, and contributes to timely energy re-distribution. Transforming SL into base stations also reduces costs and visual clutter, enhancing wireless connectivity for various applications. This integration fosters smart city applications like traffic management, environmental monitoring, and public safety, paving the way for a more connected and sustainable urban landscape.
- -
- Visible Light Communication (VLC) is a technology that enables data transmission through the use of visible light as the medium. It uses LEDs or other sources of visible light to modulate data signals, and photodetectors or cameras to receive the transmitted information. This allows for data communication while simultaneously providing illumination. Building on this technology, advancements in vehicle positioning have been explored. LED SLs have been used to transmit identification codes with real-world coordinates, which are received by CMOS image sensors in vehicles, enabling the determination of the vehicle position [172,173]. SLs can also transmit information captured by smartphone cameras [174]. These developments in VLC aim to enhance data rates and immunity to radio frequency interference, particularly in Vehicle-to-Infrastructure (V2I) and Infrastructure-to-Vehicle (I2V) communications.
- -
- Li-Fi technology, a subset of VLC, utilizes LED light for high-speed data communication, offering benefits such as high-speed internet, two-way communication, and enhanced safety in certain environments [175]. Integrated with streetlamps, it has been used to improve toll collection systems and provide location-based services, enhancing navigation and traffic monitoring [175,176]. This technology faces challenges such as the inability to penetrate opaque objects and the necessity for a direct line of sight between transmitters and receivers [177]. Despite these limitations, Li-Fi in SLs presents promising opportunities for smart city applications and enhanced communication infrastructures.
- Streetlamps as a Power SourceIn response to the growing demand for battery charging in EVs and personal devices, there is an increasing need for accessible power sources. SLs present a promising solution as convenient charging points. Various studies in the literature have proposed innovative solutions for leveraging SLs as EV charging infrastructure [178,179]. Additionally, when stand-alone SLs generate excess energy, this surplus can be used for EV charging or re-injected into the electrical grid [180]. These solutions are particularly impactful in remote and humanitarian settings, where solar-powered SLs can be designed with ground-level AC sockets to provide additional energy access for communities [45].
- Streetlamps and ParkingSLs, equipped with advanced technologies such as CCD cameras and computer vision techniques, have become crucial in optimizing urban parking solutions. Mounted cameras on SLs offer real-time insights into traffic patterns and parking space availability, aiding in the prevention of traffic congestion due to issues like double-parking [114,181]. Innovative models have been developed to enhance the accuracy and stability of parking space detection, using various methods like overlapping and voting mechanisms [143]. Collectively, these studies demonstrate the growing potential of SLs as multifunctional assets in modern urban planning, specifically in the facilitation and management of parking.
- Streetlamps and Environmental MonitoringEnvironmental monitoring has become a prominent application for SLs, reflecting their versatile utility in contemporary urban life. Special sensors can detect harmful levels of CO2 and other pollutants in the air [58,171]. These units can also be equipped to measure temperature and humidity, effectively acting as weather stations [74]. Noise pollution is another area where they can contribute. For safety, these installations can be designed to notice strange activities and trigger alarms [55,182], and even listen for unusual noises like gunshots [183]. Additionally, they can look for signs of fire or other emergencies using special sensors [74,171].Extended functions of SLs include street sign queries, push-to-talk features, and speakers [16]. Another exploration involves using footsteps to power streetlamps using the piezoelectric effect, turning everyday human motion into a valuable energy source for urban lighting [184]. The integration of these auxiliary uses within SL emphasizes their potential to enhance urban living.
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
SL | Streetlamp |
SSL | Smart Streetlamp |
Iot | Internet of things |
HID | High Intensity discharge |
HPS | High Pressure Sodium |
HPM | High Pressure Mercury |
MH | Metal Halid |
LPS | Low Pressure Sodium |
CFL | Compact Fluorescent Lamp |
LED | Light Emitting Diode |
CRI | Color Rendering Index |
CCT | Correlated Color Temperature |
K | Kelvins |
lm | lumens |
PWM | Pulse-Width Modulation |
LDR | Light Dependent Resistor |
IR | Infra-Red |
PIR | Passive Infra-Red |
CCTV | closed-circuit television |
CMOS | Complementary Metal-Oxide-Semiconductor |
CCD | Charge-Coupled Device camera |
PV | Photo-Voltaic |
Li-Dar | Light Detection and Ranging |
VLC | Visible light communication |
Li-fi | Light fidelity |
VANET | Vehicle Ad Hoc Network |
GUI | Graphical User Interface |
EV | Electrical Vehicle |
LC | Local Controller |
CC | Control Center |
BACS | Building Automation control systems |
TAI | Traffic Adaptive Installation |
ARIMA | Auto-regressive Integrated Moving Average |
SARIMA | Seasonal Auto-regressive Integrated Moving Average |
TALISMAN | Traffic-Aware Lighting Scheme Management Network |
LoD | Light on Demand |
LP | Linear Programming |
AI | Artificial Intelligence |
PSO | Particle Swarm Optimization |
ABC | Artificial Bee Colony |
ANN | Artifial Neural Network |
FFNN | Feed forward neural network |
CNN | Convolutional Neural Network |
LSTM | Long short term memory |
GRU | Gate recurrent unit |
YOLO | You Only look Once |
SVM | support vector machine |
DL | Deep Learning |
FL | Fuzzy Logic |
ANFIS | Adaptive neural-based fuzzy inference system |
MAS | Multi-Agent System |
FLC | Fuzzy Logic Controller |
NEAT | NeuroEvolution of Augmenting Topologies |
XGBoost | Extreme Gradient Boosting |
ROI | Reagion Of Interest |
RMSE | Root Mean Square Error |
MAPE | Mean Absolute Percentage Error |
MAE | Mean Absolute error |
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References | Sensors and Lamps | Light Control Methods | Light Schemes | Artificial Intelligence | Other Applications | System Implementation | Energy Savings Assessment |
---|---|---|---|---|---|---|---|
(Mahoor et al., 2019) [12] | x | √ | x | x | x | x | √ |
Pasolini et al., 2019 [13] | x | x | x | x | √ | x | √ √ |
(Mukta et al., 2020) [14] | √ | √ * | x | x | √ | √ | √ |
(Omid et al., 2021) [15] | x | √ * | x | x | √ | √ √ | √ √ |
(Aji Gautama et al., 2022) [17] | √ * | √ * | x | √ √ | √ | √ | √ |
(Rajesh et al., 2021) [16] | √ | √ | x | x | √ | √ | x |
(Amjad Omar et al., 2022) [18] | √ | √ * | x | x | √ | x | √ |
Our paper | √ * | √ √ | √ √ | √ √ | √ * | √ √ | √ √ |
Paper | Energy Source | Used Sensors | Used Lamps | System Implementation | Dimming Profile | Energy Savings |
---|---|---|---|---|---|---|
[49] | Grid | None | LED | Real implementation | Part night + step dimming | 15% energy reduction when using mesopic vision and class dimming |
[45] | Solar with PV | Electrical metering | LED | Real implementation in a refugee camp | Part night | Unspecified |
[9] | Grid | None | HID | Real implementation in Cordoba, south Spain | Part night + step dimming | From 30% to 40% |
[41] | Grid | None | HPS | Installed on a University campus | Part night + two steps | 36% reduction |
[46] | Grid | Acoustic; presence; air quality | LED with different colors | Simulations | Part night | 15% |
[54] | Grid | None | LED | Simulations | Part night + step dimming | 67% |
[42] | Grid | Light | HPS and LED | Installed on a University campus | Part night + two steps + step dimming | First scenario: 50%; second scenario: 30%; third scenario: 40%; fourth scenario: 60% |
[28] | Grid | None | LED and HPS | Simulations | Part night on HPS lamps conventional scheme on LED lamps | 21% energy saving with part-night (HPS)44% energy savings using LED |
[47] | Grid | None | LED and Induction lamps | Pilot project in Jakarta | Part night | 38% reduction just by replacing lamps56% by using static control |
[6] | Grid | None | LED | Pilot project in Rome, Italy | Part night + step dimming | 37% reduction |
[43] | Grid | None | LED and HPS | Case study | Part night + step dimming | 46% reduction with part-time HPS 66% reduction with part-time LED |
[37] | Grid | None | HID | Real Implementation in Heshan city, china | Part night + step dimming | 27% |
[7] | Grid | None | HPS and LED | Pilot site on a university campus | Conventional scheme + two steps | 40% |
[50] | Grid | None | HPS and LED and MH | Simulations | Conventional scheme | 62% savings using LED against HPS and MH |
[44] | Grid | Power metering | HPS | Real implementation in a university in Turkey | Step dimming + group controlled | 24.1 yearly energy savings |
Paper | Energy Source | Used Sensors | Used Lamps | System Implementation | Dimming Profile | Energy Savings |
---|---|---|---|---|---|---|
[71] | Grid | LDR; proximity; ultra sonic | LED | Prototype + simulations | Group control + two steps | Unspecified |
[60] | Grid | PIR; LDR; current and voltage sensors; | LED | Small prototype | Zoning | 43% |
[55] | Grid | Infrared; light; electrical metering | Unspecified | Real implementation in Xiasha district, China | Two steps + individual control | Unspecified |
[74] | Grid | PIR; LDR; humidity; fire sensor | LED | Simulations | Part night + step dimming | 20% |
[76] | Grid | Motion; illumination; current sensor; voltage sensor; GPS | HPS | Implemented on a university campus | Part night + step dimming + group control | 13 KWh annual savings |
[62] | Solar PV | PV panel as a sensor | LED | Simulations + prototype | Part night + step dimming | Unspecified |
[70] | Grid | Motion; LDR | LED | None | Zoning + step dimming | Unspecified |
[72] | Grid | Infrared; LDR | LED | Simulation + Prototypes | Zoning | 42% |
[75] | Grid | Luminosity; presence sensors | LED | Simulations | Part night + two levels | Unspecified |
[7] | Grid | Infrared | LED | Implementation in pilot sites | Part night + step dimming | 70% |
[57] | Solar PV | PIR; light sensor; electrical metering | LED and HPM | Implemented in a rural area | Two steps + individual control | 90% against grid powered HPM |
[65] | Solar PV | PIR; light; electrical metering | LED | Implemented in a crossroad in a rural area | Two steps + group control | From 220 KWh to 67 KWh annually |
[58] | Grid | Camera; air quality; PIR; LDR; power sensor | LED | Simulation | Two steps | Unspecified |
[59] | Grid | Infrared; voltage sensor | LED | Small prototype | Two steps | 45% on weekdays and 32% on weekends |
[73] | Grid | Camera; rain sensor; vehicle counter; power meters | LED | Prototype | Part night + step dimming | From 29% to 77%, depending on the implemented zone |
[63] | Grid | Motion; light | LED | None | Part night + two steps | 17% using only light sensor, 20% with motion sensor and up to 33% using both sensors. |
[56] | Solar PV | Motion | LED | None | Two steps + group control | Unspecified |
[69] | Grid | Brightness; motion | LED | None | Two steps | None |
[29] | Grid | PIR; light | LED and HPS | Simulations | Zoning | Payback time estimation |
[66] | Grid | Microwave Doppler sensor | HPS | Installed a prototype on a university campus | Group controlled + two steps | 37% |
Paper | Energy Source | Used Sensors | Used Lamps | System Implementation | Dimming Profile | Energy Savings |
---|---|---|---|---|---|---|
[77,78] | Grid | Temperature; humidity; particle concentration; power meters | LED | Simulation and prototype | CCT + group controlled + step dimming | Unspecified |
[80] | Grid | None | LED | Simulations using a real case study | Step dimming | Connectivity should be maintained at all time |
[81] | Grid | Light sensor | Not specified | Experiments in laboratory | Group controlled + two steps (ON/OFF) | Unspecified |
[83] | Grid | Eye-tracking glasses | LED | Simulations + indoor | Step dimming + group controlled | Unspecified |
[84] | Grid | Road side sensors | Not specified but LED | Prototype | Step dimming, each speed corresponds to a light level | Unspecified |
[86] | Grid | Lux; temperature; power meters | HPS | Implemented in university parking | Step dimming + part night | Up to 45% |
[87] | Grid | Light | LED | Simulations | Step dimming | Up to 70% |
[88] | Grid | Motion, photo-electric, pv panels | MH, HPS, LED | Implemented on a university campus | Group control + step dimming | 33% |
[89] | Grid | Doppler sensor | LED | Installed in Luyang Avenue, Lucheng City, China | Predefined + zoning (ahead) + two steps control | Up to 19% |
[6] | Grid | Cameras; infrared; inductive loops; | LED | Installed on a pilot street | Step dimming | 59% |
[92] | Grid | Light sensor | LED | Installed at a university sub-street | Step dimming + group control | From 68% to 80% in winter and summer |
[93] | Grid | Custom PIR sensor | LED | Real implementation | Zoning with two steps | From 60% to 77% |
[95] | Grid | Vehicular sensor | LED | Simulations | Zoning + two steps | Up to 60% |
[96] | Grid | Presence sensors | LED | Simulation | Zoning + two steps | Up to 57% |
[97] | Grid | Photodetector; occupancy sensors | Fluorescent; LED | Simulations using a port in Greece as testbed | Step dimming + group control | 56% reduction |
[99] | Grid | Presence sensor | LED | Prototype at a campus | Zoning | Unspecified |
[100] | Grid | PIR | LED | Simulations | Step dimming + zoning | Unspecified |
[39] | Grid | Light; presence sensor | LED | Simulations | Zoning + step dimming | Up to 37% |
[27] | Grid | Traffic sensor | LED | Simulations |
| from 12% to 94% |
[101] | Grid | Radar; photo diodes | LED | Simulations | Zoning + two steps | Up to 60% |
[102] | Grid | Light; motion | LED | Simulations | Zoning + two steps | Up to 52% for non-uniform traffic distribution. |
[103] | Grid | Light sensor | LED | Implemented in a testbed | Zoning + step dimming | 90% |
[104] | Grid | Lux meters, power meters | LED | Installed in two different test sites | Step dimming + group controlled | 30% |
[105] | Grid | Ambient | HID lamps | Installed on a pilot street | Step dimming + group control | Between 35% and 45% |
[106] | Grid | Motion; current; voltage | MH | Implemented for pedestrians on a campus | Zoning + group control + freely controlled | 12,165 KWh energy savings for 107 campus SLs |
[107] | Grid + solar PV | Infrared | LED | Installed prototype at a campus | Zoning + group control + two steps | 55%, with 6043 KWh annual positive energy balance |
[108] | Grid | Not specified | MH and LED | Simulations | Step dimming + group controlled | 37% |
Paper | NN Application | Type of NN | Inputs | Outputs | Intermediate Controller | System Validation | Dimming Profile | Energy Savings |
---|---|---|---|---|---|---|---|---|
[145] | Detect vehicles, pedestrians and motorists in night conditions | YOLOv5s | High-definition video images | Predicted bounding boxes and class labels of the detected objects | Controller outputs different brightness level based on the class of detected road user. | Experimental setup on an intersection | Step dimming | Up to 35.2% energy savings |
[138] | Detection and classification of objects at night | FFNN | Video images | Predicted bounding boxes | Simple if-then rules based on if there is a valid detection | Simulations | Two steps (20% minimum) | Not specified |
[142] | Detect and identify road users from video | SSD, YOLOv3, YOLOv2 | High-definition video images | Predicting bounding boxes and class probabilities | If-then rules are used to change the brightness level when a vehicle approaches or leaves the detection area | Simulations | Zoning | Not specified |
[137] | Multivariate time-series forecast: predict energy generation of PV panel and wind turbines | LSTM | For PV power: solar irradiation, temperature, and cloud cover prediction data.For wind power: historical data and climate prediction data, including wind speed and direction | Day-ahead hourly power generation of a PV panel and wind turbine | If-then rules based on load demand and power production | Simulations | Step dimming | An average of 23% across 10 days, while day-to-day it ranged from 6% to 80% |
[147] | Image processing | YOLOv5 | Video images from IP camera | Classification of road users and traffic count | Light classes obtained from traffic count and traffic composition along with other fixed road parameters | Simulations | Step dimming (classes) | Up to 55% reduction in electricity costs |
[58] | Image processing | CNN | Video images | Detect vehicle through license plate numbers | Controller not based on results of image processing | Simulation | Two steps | Not specified |
[143] | Image processing | YOLOv3 | Video images | Bounding boxes, along with their class labels and confidence scores; | If-then rules switching ON lamps in front of detected vehicles on a parking lot | Simulation and small scale prototype | Two steps + zoning (in front of vehicles) | Not specified |
[144] | Image processing | Tiny-YOLO | Video images | Detect, track and classify type of road users | Simple if-then rules based on if there is a valid detection | Simulation | Two steps | Not specified |
[128] | Predict energy consumption | FFNN | Three inputs: inter-distance between streetlights; energy consumption of the SLs; traffic volume on the road; | Reduced energy consumption of the street lighting system | None | Simulations | Zoning | Various energy savings for different interspaces and traffic flow between SLs |
[127] | Control lamps | FFNN | Meteorological data | Light level of SLs | None | Simulations | Freely controlled + individual or group controlled | Up to 60% |
[139] | Time-series forecast: predict traffic flow | Not specified | Previous traffic flow data | Predict traffic flow for the upcoming 15 min | Lamp brightness adjusted based on traffic flow | Simulations | Group controlled + step dimming | 30% energy reduction |
[140] | Image processing | CNN | Video images | Bounding boxes, along with their class labels and class probabilities | Lamps turn ON if there is a detection | Simulations + small prototype | Two steps (on/off) | 30% energy savings |
[136] | Multivariate time-series forecast: predict energy generation | LSTM | Historical data on weather comprising 11 features | Predict the hourly PV panel energy generation for the upcoming 5 days | Brightness coefficients for the upcoming 5 nights are calculated based on the forecast results | Meteorological prototype | Freely controlled | Battery charge always maintained above 30% |
[126] | Control lamps | FFNN | Meteorological data comprising nine inputs | Light level of SLs for the upcoming 24 h | None | Simulations | Freely controlled + individual or group controlled | Not specified |
[131] | Univariate time-series forecast: predict traffic flow | FFNN | Previous 8 h historic traffic flow data | Traffic flow for the upcoming 1 h | A linear function converts predicted traffic to corresponding light levels | Simulations | Two steps + freely controlled | Up to 50% |
[132] | Univariate time-series forecast: predict traffic flow | FFNN | Previous 24 h historic traffic flow data | Traffic flow for the upcoming 1 h | A downgrade by two classes or one class occurs if normalized traffic flow decreases by 25% or 50%, according to the EN 13201 | Simulations | Step dimming (EN classes) | Up to 40% energy reduction |
[130] | Process data | FFNN | Four inputs comprising arm length, mounting height, inter-distance between lamps and normalized sensor values | Inferences from previously acquired data | Fuzzy logic controller | Implemented in a residential area | Step dimming + zoning with two levels (on/off) | Power consumption reduced by 13.5% |
[129] | Predict power from luminosity level and vice-verse | Two FFNNs | FFNN1: power consumption;FFNN2: luminosity level | FFNN1: luminosity level; FFNN2: power consumption | None | Prototype | Step dimming + group control | Up to 25% |
[94] | Univariate time-series forecast: predict traffic flow | FFNN | Previous 24 h historic traffic flow data | Traffic flow for the upcoming 1 h | Fuzzy logic controller | Simulations | Freely controlled + group controlled | Battery charge always maintained above 30% even in worst case scenarios |
[134] | Multivariate time-series forecast: traffic flow prediction | FFNN, LSTM | Previous 48 h historic traffic data including traffic volume, speed, and occupancy rate | Traffic flow for the upcoming 1 h | Fuzzy logic controller | Simulations | Freely controlled + group controlled | Saves up to 58% |
[52] | Multistep multivariate time-series forecasting: solar irradiance prediction | FFNN, LSTM, GRU, CNNLSTM | Previous 7-days hourly weather data comprising: temperature, wind speed, wind direction, solar irradiance | Hourly irradiace values for the upcoming 3 days | Fuzzy logic controller | Simulations | Freely controlled + group controlled | Battery charge always maintained above 90% even in worst case scenarios |
Paper | Inference Methods | Inputs | Input’s Membership Functions | Aggregation Method | Outputs | Output’s Membership Function | Deffuzification | System Implementation | Dimming Profile | Energy Savings |
---|---|---|---|---|---|---|---|---|---|---|
[150] | Mamdani | Weather and Time | Triangular | Maximum operator | Brightness level | Trapezoidal | Center of gravity | Simulations | Freely controlled + group controlled | Up to 50% |
[153] | Two Mamdani inference methods | Humidity, temperature, air quality, illuminance | Unspecified | Maximum operator for both inference methods |
| Unspecified |
| Simulations | Group controlled + freely controlled + CCT | Unspecified |
[155] | Three Mamdani inference methods | Traffic flow, ambient brightness and humidity | Triangular | Unspecified | Relative output power | Triangular and trapezoidal | Center of gravity | Simulations | Freely controlled | Up to 69% |
[151] | Mamdani | Light level, state of charge of battery | Triangular | Unspecified | Light intensity | Triangular | Unspecified | Simulations | Freely controlled | 24% energy savings |
[154] | Takagi-sugeno | Ambient light, pedestrian volume | Triangular | Unspecified | Dimming level | Triangular | Unspecified | Simulations | Freely controlled | 44% energy savings |
[156] | Mamdani | Light level, voltage deviation and change rate | Triangular | Max-min method | Light intensity | Unspecified | Weighted average method | Simulations + prototype | Step dimming | Unspecified |
[152] | Mamdani | Battery level, wind speed | Triangular | Unspecified | Light intensity | Triangular | Center of gravity | Simulation | Freely controlled | Not specified |
[157] | Mamdani | Aggregated readings of lux-meters and presence sensors | Triangular and trapezoidal | Min-max | Dimming level | Triangular and trapezoidal | Centroid method | Simulations | Freely controlled | Unspecified |
[158] | Sugeono-type ANFIS | Light intensity, twilight threshold, pedestrian flow, daytime, location | Bell-shaped | Maximum |
| Unspecified | Weighted average method | Test bed | Freely controlled | Up to 40% energy savings |
[94] | Mamdani-sugeono | Traffic flow, battery energy level | Triangular | Min-max | Light level | Triangular | Centroid method | Simulations | Freely controlled + group controlled | Battery charge maintained above 30% |
[134] | Mamdani-sugeono | Traffic flow, battery energy level, solar irradiance for the upcoming one day | Triangular | Min-max | Light level | Triangular | Centroid method | Simulations | Freely controlled + group controlled | Saves up to 58% |
[52] | Mamdani-sugeono | Traffic flow, battery energy level, solar irradiance for the upcoming three days | Triangular | Min-max | Illuminance level | Triangular | Centroid method | Simulations | Freely controlled + group controlled | Battery charge maintained above 90% |
Paper | Energy Source | Used Sensors | Used Lamps | System Implementation | Dimming Profile | Energy Savings |
---|---|---|---|---|---|---|
[162] | Power Grid | Camera, noise sensor | LED and HPS | Simulations | Two steps + freely controlled | 70% savings |
[160] | Grid | Electrical measurement, presence, temperature, light | Unspecified | Simulations | Two steps + group controlled + step dimming | Unspecified |
[161] | Power grid | PIR, light sensor, velocity sensor | Unspecified | Simulations | Two steps + group controlled + step dimming | Unspecified |
[164] | Power grid | Brightness, motion | Unspecified | Simulations + prototype | Step dimming | Unspecified |
[165] | Power grid | Brightness, motion | Unspecified | Simulations | Step dimming | Unspecified |
[163] | Power grid | Voltage, light, presence | LED | Simulations | Step dimming | 40% savings |
[167] | Power grid | Special quad PIR sensor; IR sensors; temperature; light; humidity; moisture | LED | Simulations | Step dimming | Unspecified |
[166] | Power grid | Special quad PIR sensor; IR sensors; temperature; light; humidity; moisture | HPS | Simulations | Step dimming | Paper reports several energy consumption measurements |
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Agramelal, F.; Sadik, M.; Moubarak, Y.; Abouzahir, S. Smart Street Light Control: A Review on Methods, Innovations, and Extended Applications. Energies 2023, 16, 7415. https://doi.org/10.3390/en16217415
Agramelal F, Sadik M, Moubarak Y, Abouzahir S. Smart Street Light Control: A Review on Methods, Innovations, and Extended Applications. Energies. 2023; 16(21):7415. https://doi.org/10.3390/en16217415
Chicago/Turabian StyleAgramelal, Fouad, Mohamed Sadik, Youssef Moubarak, and Saad Abouzahir. 2023. "Smart Street Light Control: A Review on Methods, Innovations, and Extended Applications" Energies 16, no. 21: 7415. https://doi.org/10.3390/en16217415
APA StyleAgramelal, F., Sadik, M., Moubarak, Y., & Abouzahir, S. (2023). Smart Street Light Control: A Review on Methods, Innovations, and Extended Applications. Energies, 16(21), 7415. https://doi.org/10.3390/en16217415