Influencing Factor Analysis on Energy-Saving Refrigerator Purchases from the Supply and Demand Sides
Abstract
:1. Introduction
2. Methodology
2.1. Data Collection Method
2.2. Multiple Linear Regression
2.3. BP Neural Network Model
3. Results and Discussion
3.1. Supply Side
3.1.1. Refrigerator Performance Promotion
3.1.2. Energy Efficiency
3.2. Demand Side
3.2.1. Descriptive Statistics
- (1)
- Demographic variables and basic conditions of refrigerators
- (2)
- The influencing factors of purchasing refrigerators
3.2.2. Correlation Analysis
3.2.3. Regression Analysis
3.2.4. Modeling and Analysis of BP Neural Network
4. Conclusions and Future Works
- (1)
- From the demand side, consumers pay attention to the energy-efficiency grade to some extent when buying refrigerators, but refrigerators classified as Grade 2 and above still account for a certain proportion (37.5%). Brand, performance, and price are the main factors that consumers consider when buying refrigerators.
- (2)
- From the supply side, most refrigerator brands with top online sales focus on door styles and applicable types. Energy efficiency has also attracted the attention of Haier, Midea, and Melng. However, Panasonic and Siemens do not sufficiently publicize energy efficiency. About 55% of the refrigerators with top sales are Grade 1, with a large proportion being Grade 2 and above products.
- (3)
- Consumers’ energy-efficiency label trust, environmental awareness, and economic motivation have a significant impact on consumers’ willingness to buy energy-saving refrigerators, but increasing electricity prices cannot promote the purchasing of energy-saving refrigerators at present.
- (4)
- In the BP neural network prediction model, the importance of economic motivation after standardization was found to be the highest, which indicates that appropriately reducing the cost of energy services over the product’s lifecycle will help improve the acceptance of energy-saving refrigerators among consumers.
- (1)
- The government needs to further improve subsidy policy for the production and consumption of energy-saving refrigerators. Governments need to focus on subsidizing low- and middle-income families and reducing the economic burden of families buying energy-saving refrigerators. Moreover, it is necessary to improve the energy efficiency of small volume refrigerators. Brands with low market share should be supported to innovate for the purpose of manufacturing energy-saving refrigerators. Since the production of brands with high market share is large, the government should supervise refrigerators manufactured by those brands to guarantee the standardization of energy efficiency.
- (2)
- Refrigerator suppliers should increase the development and publicity of energy-saving refrigerators. Manufacturers should introduce energy efficiency with other aspects of performance, such as service life and volume, for the purpose of promoting multi-feature refrigerators. It is, moreover, vital to improve the energy efficiency of small volume refrigerators and reduce the cost of energy services over the product’s lifecycle to satisfy consumers. Refrigerator retailers need to strengthen their promotion of energy efficiency and actively guide consumers to focus on energy-saving refrigerators. The information on energy-efficiency labels need to be further explained in detail to improve the buyers’ trust and understanding.
- (3)
- It is necessary to improve consumers’ awareness of energy-efficiency labels, energy conservation, and energy-efficiency policies. Individuals should actively learn and understand energy-efficiency labels and grades and consider high energy efficiency as an important factor when purchasing refrigerators.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
Abbreviation | |
PL | Placement |
DS | Door Style |
AT | Applicable Type |
EE | Energy Efficiency |
VO | Volume |
RM | Refrigeration Mode |
FC | Frequency Conversion |
RP | Refrigerating Preservation |
TH | Thickness |
OD | Odorless |
SM | Smart |
LN | Low Noise |
DE | Degermation |
Variables | |
Energy-efficiency cognition and trust | |
Environmental awareness | |
Economic motivation | |
Electricity price incentive | |
Purchase intention | |
The predicted value of purchase intention in BP neural network model | |
The actual value of purchase intention | |
Parameters | |
Sensitivity index | |
Root mean squared error in BP neural network model | |
Root mean squared error in BP neural network model that excludes factor |
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Energy-Efficiency Grade | Energy-Efficiency Ratio | Content |
---|---|---|
Grade 1 | 3.40 and above | The greatest energy–savings and the lowest power consumption |
Grade 2 | 3.2–3.39 | Relative energy savings |
Grade 3 | 3.0–3.19 | Average level of the market |
Grade 4 | 2.8–2.99 | Lower than the market average |
Grade 5 | 2.6–2.79 | Market-access standard |
Factors | Frequency | Proportion | |
---|---|---|---|
Annual family income (CNY) | Less than 80,000 | 58 | 17.26% |
80,000–150,000 | 106 | 31.55% | |
150,000–400,000 | 139 | 41.37% | |
400,000–800,000 | 29 | 8.63% | |
More than 800,000 | 4 | 1.19% | |
Route of buying refrigerator | Online | 106 | 31.55% |
Offline | 230 | 68.45% | |
Refrigerator price (CNY) | More than 2000 | 24 | 7.14% |
2000–3000 | 90 | 26.79% | |
3000–5000 | 108 | 32.14% | |
5000–8000 | 71 | 21.13% | |
8000–10,000 | 23 | 6.85% | |
Less than 10,000 | 20 | 5.95% | |
Refrigerator age (year) | Less than 1 | 42 | 12.50% |
1–2 | 51 | 15.18% | |
3–5 | 135 | 40.18% | |
More than 5 | 108 | 32.14% | |
Refrigerator volume (liter) | Less than 200 | 61 | 18.15% |
200–300 | 117 | 34.82% | |
300–400 | 30 | 8.93% | |
400–500 | 46 | 13.69% | |
500–600 | 52 | 15.48% | |
More than 600 | 30 | 8.93% | |
Power consumption (kWh/24 h) | Less than 0.5 | 50 | 14.88% |
0.5–0.7 | 84 | 25.00% | |
0.7–0.9 | 69 | 20.54% | |
0.9–1.1 | 76 | 22.62% | |
1.1–1.3 | 25 | 7.44% | |
1.3–1.5 | 9 | 2.68% | |
More than 1.5 | 23 | 6.84% | |
Energy-efficiency level | Grade 1 | 210 | 62.50% |
Grade 2 | 94 | 27.98% | |
Grade 3 | 25 | 7.44% | |
Grade 4 | 4 | 1.19% | |
Grade 5 | 3 | 0.89% | |
Total | 336 | 100% |
First | Second | Third | Total | ||||
---|---|---|---|---|---|---|---|
Frequency | Percentage | Frequency | Percentage | Frequency | Percentage | ||
Brand | 232 | 85.61% | 26 | 9.59% | 13 | 4.80% | 271 |
Price | 35 | 18.42% | 114 | 60.00% | 41 | 21.58% | 190 |
Energy-efficiency level | 33 | 16.75% | 87 | 44.16% | 77 | 39.09% | 197 |
Service life | 11 | 19.30% | 25 | 43.86% | 21 | 36.84% | 57 |
Volume | 17 | 9.55% | 58 | 32.58% | 103 | 57.87% | 178 |
Appearance | 2 | 5.41% | 7 | 18.92% | 28 | 75.68% | 37 |
After-sale service | 5 | 11.63% | 8 | 18.60% | 30 | 69.77% | 43 |
Promotion | 0 | 0.00% | 1 | 33.33% | 2 | 66.67% | 3 |
Brand | Price | Energy-Efficiency Level | Service Life | Volume | Appearance | After-Sale Service | Promotion | Total | |
---|---|---|---|---|---|---|---|---|---|
First | 69.25% | 10.45% | 9.85% | 3.28% | 5.07% | 0.60% | 1.49% | 0.00% | 335 |
Second | 7.98% | 34.97% | 26.69% | 7.67% | 17.79% | 2.15% | 2.45% | 0.31% | 326 |
Third | 4.13% | 13.02% | 24.44% | 6.67% | 32.70% | 8.89% | 9.52% | 0.63% | 315 |
1 | 0.640 ** | 0.653 ** | 0.655 ** | 0.318 ** | |
0.640 ** | 1 | 0.636 ** | 0.694 ** | 0.408 ** | |
0.653 ** | 0.636 ** | 1 | 0.753 ** | 0.401 ** | |
0.655 ** | 0.694 ** | 0.753 ** | 1 | 0.421 ** | |
0.318 ** | 0.408 ** | 0.401 ** | 0.421 ** | 1 |
Variables | t | sig. | VIF | |
---|---|---|---|---|
Energy-efficiency cognition and trust | 0.297 | 5.449 | 0.000 | 2.465 |
Environmental awareness | 0.294 | 4.964 | 0.000 | 2.572 |
Economic motivation | 0.236 | 3.703 | 0.000 | 2.963 |
Electricity price incentive | −0.021 | −0.487 | 0.627 | 1.305 |
Test of significance | F = 93.377 sig. = 0.000 | |||
Goodness of fit | R2 = 0.530, adjusted R2 = 0.524 |
Importance | Standardized Importance | |
---|---|---|
Energy-efficiency label trust | 0.212 | 73.6% |
Energy efficiency concern | 0.155 | 54.0% |
Energy efficiency policy awareness | 0.152 | 53.0% |
Environmental awareness | 0.193 | 67.3% |
Economic motivation | 0.287 | 100.0% |
Sensitivity Index | Rank of Sensitive Factor | ||
---|---|---|---|
Full factors | 0.8214 | ||
Energy-efficiency label trust | 0.8639 | 1.0517409 | 2 |
Energy-efficiency concern | 0.8322 | 1.0131483 | 4 |
Energy-efficiency policy awareness | 0.9542 | 1.1616752 | 1 |
Environmental awareness | 0.8499 | 1.0346969 | 3 |
Economic motivation | 0.7861 | 0.9570246 | 5 |
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Lv, Z.; Zhang, X. Influencing Factor Analysis on Energy-Saving Refrigerator Purchases from the Supply and Demand Sides. Sustainability 2023, 15, 9917. https://doi.org/10.3390/su15139917
Lv Z, Zhang X. Influencing Factor Analysis on Energy-Saving Refrigerator Purchases from the Supply and Demand Sides. Sustainability. 2023; 15(13):9917. https://doi.org/10.3390/su15139917
Chicago/Turabian StyleLv, Zhiyu, and Xu Zhang. 2023. "Influencing Factor Analysis on Energy-Saving Refrigerator Purchases from the Supply and Demand Sides" Sustainability 15, no. 13: 9917. https://doi.org/10.3390/su15139917
APA StyleLv, Z., & Zhang, X. (2023). Influencing Factor Analysis on Energy-Saving Refrigerator Purchases from the Supply and Demand Sides. Sustainability, 15(13), 9917. https://doi.org/10.3390/su15139917