1. Introduction
The global urban population is expected to reach 68% by 2050 due to the acceleration of the urbanization process [
1]. The construction industry is a rapidly growing sector, accounting for 40% of total global energy consumption [
2,
3]. In 2020, China pledged to ‘peak carbon emissions by 2030 and achieve carbon neutrality by 2060’ [
4]. China’s construction sector alone emits close to 2 billion tonnes of CO
2 annually [
5]. According to reference [
6], green buildings consume 25% to 30% less energy than traditional buildings. Therefore, developing green buildings is an effective way to reduce carbon emissions [
7,
8]. In 1990, the United Kingdom released the world’s first green building assessment method, which brought green building assessment to the public’s attention [
9,
10]. In comparison to traditional energy-saving buildings, green buildings offer greater advantages in energy conservation and emission reduction [
11]. Currently, many countries have established a green building sustainable development evaluation system that aligns with their national conditions [
12]. Mature green building technologies can effectively reduce the energy consumption of buildings [
13,
14]. Although green buildings offer more advantages than traditional buildings, they still face challenges such as technology, costs, and benefits [
15,
16]. Each national evaluation system has its own focus, but generally, it aims to promote environmental protection, energy efficiency, and sustainable development [
9,
17]. China’s Assessment Standard for Green Building GB/T 50378-2019 (ASGB 2019) focuses on adapting to the country’s environmental conditions, resources, and energy conditions, as well as residents’ living habits [
18]. It also emphasizes the applicability of residential and public buildings.
Table 1 compares green building evaluation standards across different countries.
Compared with developed countries, China’s demand for green buildings remains high, with about 2 billion square meters of new commercial buildings added every year [
19,
20]. While learning from international experience, China’s green building development also emphasizes the integration of traditional Chinese architectural culture, regionalism, adaptability, and the protection of cultural heritage [
21]. In 2005, China’s former Ministry of Construction and Ministry of Science and Technology jointly issued the ‘Green Building Technical Guidelines’. In accordance with China’s national conditions and international building evaluation standards, the first edition of the Assessment Standard for Green Building (GB/T50378-2006) was promulgated in 2006. This standard provides a clear definition of ‘green building’ in China [
22]. The standard evaluates the environmental performance of buildings in six categories: land use and outdoor environment, energy efficiency, water efficiency, material efficiency, indoor environmental quality, and operation management. It also establishes basic indicators [
23,
24]. In 2009 and 2010, two evaluation standards were implemented: Evaluation Standards for Green Industrial Buildings and Evaluation Standards for Green Office Buildings [
25]. The 2014 second edition of the Assessment Standard for Green Building extended the scope of the standards to include all types of civil buildings. It also optimized and supplemented specific requirements [
26]. In 2019, a new evaluation method was proposed based on five green performance indicators: safety and durability, health and comfort, convenience of life, resource saving, and livable environment [
18]. China has developed a comprehensive system for green building standards that covers three levels: applicable object, applicable stage, and standard type [
27].
Table 2 illustrates the development process of China’s Assessment Standard for Green Building.
In 2019, China’s total building area exceeded 500 billion square meters, with only 10% of it certified for green building [
28]. By 2020, more than 77% of new civil buildings in cities and towns were green buildings [
29]. In 2021, China’s green buildings increased by 2.362 billion square meters, and the proportion of new green buildings reached 84.22% of the annual new buildings [
30]. In accordance with green building evaluation requirements, buildings must meet green building grade standards while fulfilling their general use functions throughout their entire life cycle [
31]. Despite the rapid development of China’s green building industry in recent years, there are still issues with meeting expected outcomes [
32]. Therefore, it is important to consider the specific needs of occupants when designing the architecture comprehensively [
33].
At present, whether the comfort of Chinese buildings and the surrounding living environment meet people’s growing needs for a better life has become the focus of current green building development. However, in ASGB 2019, all evaluation indicators are evaluated using the same system, which inevitably reduces the pertinence of building use functions and fails to reflect the impact of evaluation indicators on life satisfaction [
34]. Therefore, it is necessary to evaluate and improve the indicators in the green evaluation standard according to the needs and satisfaction of personnel.
Hubei Province is situated in the heartland of China and is a typical central region [
35]. The winter temperature in most areas ranges from 3 °C to 5 °C, while the summer temperature ranges from 26 °C to 29.5 °C. The average annual precipitation is 1200.7 mm, and the climate is characterized by hot summers and cold winters. Therefore, buildings require both cooling in summer and heating in winter, resulting in high energy consumption demands. It is important to understand the needs of users [
36]. With the development of the economy, Hubei Province has become an important transportation hub in China, leading to a sharp increase in population and demand for buildings. This paper aims to comprehensively assess people’s use and demand for green building functions in Hubei Province, China. To achieve this, we use the satisfaction degree of existing green building users in Hubei Province as an indicator, following the guidelines set out in ASGB 2019. This study focuses on public and residential buildings. A satisfaction evaluation model was developed using the analytic hierarchy process, based on questionnaire surveys and statistical analysis. The weight of the satisfaction index of residential buildings was calculated, and the weight ratio of each index in ASGB 2019 was compared. The research findings provide a valuable theoretical foundation for the current direction of green building development. The questionnaire survey uses a five-level scale, with the first- and second-level index questions compiled based on the scoring items in ASGB 2019. This paper focuses on two main issues: (1) This report evaluates the satisfaction levels of the first-level index for both residential and public buildings, as well as their current functional status. (2) Additionally, it examines the weight distribution and satisfaction characteristics of secondary indicators for these types of buildings. The purpose of this evaluation is to identify indicators based on satisfaction and provide technical guidance and suggestions for the development of green buildings and the green transformation of existing buildings.
2. Investigation and Implementation
2.1. Survey Area
This survey involved research on a total of 6 prefecture-level cities in Hubei Province, including 9 public buildings and 14 residential buildings.
Figure 1 shows the project distribution map, while
Table 3 provides specific research project information and green building assessment time.
2.2. Research Method
This study conducted a questionnaire survey on green building users in Hubei Province to assess their satisfaction with building use. A questionnaire survey was used as a research method:
- (1)
Determine research objectives and samples:
The survey aimed to evaluate satisfaction with the use of green buildings in Hubei Province. To ensure representative samples from different regions and building types, the investigation focused on users of residential and public buildings that have been rated as green buildings in the past five years in Hubei Province.
Questionnaire content: The design included basic user information (age, gender) and questions related to satisfaction with green building use. Questions were compiled according to key indicators in ASGB 2019.
Types of questions: The questionnaires were all compiled using a five-level satisfaction scale (e.g., on a scale of 1 to 5, from “very dissatisfied” to “very satisfied”) to rate different aspects of satisfaction.
A paper questionnaire and an online questionnaire were used to conduct the survey. Participants were selected for the survey using random sampling at the green building site. To ensure sample diversity and representativeness, project property management staff were authorized to issue online questionnaires to owners on their behalf. The deadline for online questionnaire collection was determined, and the data were organized and checked for integrity after collection. The photograph below displays the field research conducted on green buildings. For detailed information on the survey questionnaire, please refer to
Appendix A.
Figure 2 illustrates the research scenario, with
Figure 2a–c representing typical buildings and
Figure 2d–f depicting the distribution of survey questionnaires offline. Meanwhile,
Figure 2g–i show the distribution of online questionnaires to property management personnel.
Statistical software was utilized to analyze data both descriptively and inferentially. The satisfaction results were analyzed, highlighting areas of high satisfaction and identifying areas for improvement. Based on the findings, specific recommendations were made to enhance the design and management of green buildings in China in the future.
2.3. Questionnaire Design
The questionnaire was compiled based on the ASGB 2019 in China, and some scoring items with high attention were selected. The survey was conducted through field visits to the star-rated buildings that passed the green building assessment in Hubei Province in 2019–2020, and the questionnaire was released in online and offline forms.
Table 4 and
Table 5 show the questionnaire questions and corresponding index numbers.
This survey included public and residential buildings. Public buildings encompassed shopping malls, hospitals, and office buildings. The survey participants were of varying genders and ages, including teenagers (under 18 years old), youth (18–30 years old), prime age (31–50 years old), and elderly (over 51 years old).
The researchers distributed the offline questionnaire, and the project owners filled it out. On the other hand, the property management staff distributed the online questionnaire to the community owners or users of public buildings. This distribution strategy aimed to ensure that all participants were actual users of the current green buildings, thus ensuring the authenticity and reliability of the questionnaire results.
2.4. Reliability and Validity Analysis
Upon completion of the survey, the reliability of the collected questionnaires was calculated to determine the reliability of the questionnaire data. The reliability of the questionnaire was determined using Cronbach’s Alpha coefficient. A coefficient higher than 0.8 indicates high reliability, while a value between 0.7 and 0.8 indicates appropriate reliability. If the value falls between 0.6 and 0.7, it indicates that the data are available only after the questionnaire is modified. If the value is less than 0.6, it indicates low reliability and should be rejected. Equation (1) shows the reliability coefficient:
where
α is the reliability coefficient;
K is the number of test questions;
is the variation of all subjects’ scores on question
i;
is the variance of the total score of all subjects [
37].
2.5. Correlation Analysis of Satisfaction
This questionnaire analyzes the preferences of different groups regarding the use needs of residential and public buildings based on their satisfaction. Factors such as gender and age of building users affect the demand for building use. The report proposes an analysis of the use needs of different groups of buildings based on their satisfaction and in accordance with ASGB 2019.
This study analyzed the correlation between sample variables and factors and investigated the relationship between gender and age and satisfaction and demand of each index using a T-test, one-way ANOVA, and chi-square test. The language used is clear, objective, and value-neutral, with a formal register and precise word choice. The text adheres to conventional structure and formatting features, including consistent citation and footnote style. The grammar, spelling, and punctuation are correct. No changes in content were made.
2.5.1. Independent Sample T-Test
The independent sample T-test is employed to compare the significance of the mean difference in continuous variables between two groups. In the case of two groups, the difference between gender and satisfaction is calculated, and the sample size and variance are taken into account to determine whether there is a significant difference in the mean.
The purpose of the independent sample
T-test is to determine the probability of a difference occurring between two averages. Equation (2) is used to compare the difference between a sample average and a known population average to test for significance.
where
and
are the sample variances;
and
are the sample sizes;
and
are the sample averages.
2.5.2. One-Way Analysis of Variance
One-way analysis of variance is used to compare the means of continuous variables between multiple groups for statistically significant differences when there are multiple levels (groups) of an independent variable (the level of independent variable should be ≥3). By comparing the variation of age and satisfaction with the size of the variation within the group, it can be determined whether there is a significant difference in the mean value. The correlation test of personnel satisfaction involves the application of one-way ANOVA, which is calculated according to the following steps:
- (1)
The sum of the squares of the deviation of the overall data is
. The specific calculation formula is as follows:
where
is the result of any test;
is the total average value of the test results.
- (2)
The sum of the squares of the difference between the groups is
, indicating the degree of difference between the groups:
where
is the average value of test results in any group; the meanings of other parameters are the same as the preceding ones.
- (3)
The sum of the squares of the intra-group deviation
represents the degree of difference within the group:
- (4)
To eliminate the effect of the number of samples on the sum of squares of deviation, divide the sum of squares of deviation by the corresponding number of degrees of freedom. The sum of the squared deviations between groups A is transformed into the variance between groups
, as shown in the equation for
:
where
m − 1 is the degree of freedom of variance between groups; the meanings of other parameters are the same as the preceding ones.
- (5)
The sum of the squares of the intra-group deviations is converted to the intra-group variance
:
where
N is the total number of samples; that is,
and
are the degrees of freedom of variance within the group; the meanings of other parameters are the same as the preceding ones.
- (6)
Finally, a statistic is used to test the significant influence of factors on the results, and F-distribution is used to test and analyze the results, as shown in Equation (8):
If the difference between samples has little effect on the detection results, then only random error affects the intra-group and inter-group variance, and the ratio will be close to 1.
If the difference between samples has a large impact on the detection result, then the inter-group variance will be greater than the intra-group variance, and the ratio will be greater than 1.
When this ratio is greater than a certain degree (F-test critical value), it indicates that there is a significant difference in the levels of different factors, or that factors have a significant impact on the results; in this case, the differences between different samples are too large and the samples are not uniform.
2.5.3. Chi-Square Test
The chi-square test is employed to compare whether there is a significant difference between the observed and expected values. It is suitable for analyzing categorical variables to test the correlation and independence between gender, age, and demand for each dimension. The test calculates the difference between the observed frequency and the expected frequency to determine whether the variables are correlated or independent. Once the theoretical and actual values have been obtained, the chi-square test can be performed. The significance of the difference is indicated by the chi-square value, with a smaller
p-value indicating a more significant difference. A
p-value of less than 0.05 (α level) indicates a significant difference. The calculation is as follows:
where
is the chi-square value;
A is the actual value;
T is the theoretical value.
2.6. Analytic Hierarchy Process
2.6.1. Construct Hierarchical Structure Model
AHP is an analytical method that converts qualitative data into quantitative data based on fuzzy comprehensive evaluation [
38]. The method of fuzzy solution is used for calculation, but better results can be obtained with a large number of data samples [
39]. The hierarchical structure model is constructed based on the original questionnaire design classification. Using the questionnaire as a hierarchical structure, identify the target layer, criterion layer, and index layer.
The judgment matrix is constructed, and the specific formula is as follows:
In the formula,
bij is the indicator, and the importance scale of
ai and
aj relative to first-level indicators adopts the classical 1–9 scale method, and the quantization value k is shown in
Table 6.
The judgment matrix is computed by row
, and the specific calculation formula is as follows:
with quadrature heel
.
Find the weight coefficient
, which will be normalized to obtain
.
Solve for maximum feature root.
where
.
The weight vector is equal to the eigenvector ω corresponding to the largest eigenroot of matrix A.
2.6.2. Consistency Check
To construct the judgment matrix, a consistency test is needed to make the judgment result meet the basic consistency and order consistency.
To calculate the consistency index, see Equation (15):
where
CI is a consistency index.
The matrix average consistency index
RI value is the query value used in the process of analytic hierarchy process consistency test and the average value obtained after 500 sampling tests by scientists, which is generally applicable to the judgment matrix consistency test.
Table 7 shows the consistency indicator
RI values.
To calculate the consistency ratio, see Equation (16):
When
CR < 0.1, the judgment matrix is consistent and acceptable. On the contrary, when
CR ≥ 0.1, it is considered that the judgment matrix does not meet the consistency test and should be adjusted to maintain a certain degree of consistency [
40].
3. Analysis and Discussion
3.1. Questionnaire Basic Information
A total of 2251 questionnaires were collected, comprising 1108 for residential buildings and 1143 for public buildings.
The needs of different gender and age groups for building use vary. For instance, the provision of commercial and social service facilities can help alleviate transportation issues for the elderly, enabling them to live more comfortably in the community [
41]. Therefore, it is necessary to have a more comprehensive understanding of the satisfaction of various types of people with the existing buildings and the needs of the current buildings in terms of safety and durability, health and comfort, convenience of life, and livable environment.
Table 8 presents the basic information of the respondents.
The survey was conducted both online and offline. The respondents were predominantly middle-aged and young, with a slightly higher proportion of women than men.
To ensure the reliability of the results, measures were taken to reduce the impact of accidental factors, such as measurement errors, that could cause the respondents’ actual scores to deviate from their true scores. To evaluate the reliability of the questionnaire, reliability and validity coefficients are used.
Figure 3 shows the reliability coefficients for both residential and public buildings. Based on the reliability analysis results, it is evident that the standardized reliability coefficients of both residential and public buildings are greater than 0.7 for safety and durability, health and comfort, convenience of life, livable environment, and overall sub-items, indicating good relative reliability.
Table 9 displays the validity calculation outcomes for both types of buildings.
According to the results of the above exploratory analysis, it can be seen that the coefficient results of the KMO test are all greater than 0.9, and the value of the coefficient of the KMO test ranges from 0 to 1. The closer the coefficient is to 1, the better the validity of the questionnaire.
According to the significance of the sphericity test, it can also be seen that the significance of this time is infinitely close to 0, so the null hypothesis is rejected. Therefore, the questionnaire has good validity.
3.2. Evaluation Index Satisfaction Difference Analysis
3.2.1. Level 1 Index Satisfaction
Table 10 shows the gender differences in satisfaction.
According to the results of the T-test of the above independent samples, it can be seen that the gender difference in the satisfaction of all dimensions of residential buildings and public buildings is greater than 0.05, indicating that there is no gender difference in the satisfaction of safety and durability, health and comfort, convenience of life, and livable environment.
Based on the results of multiple comparisons presented in
Table 11, it is evident that individuals aged 31–50 report higher levels of satisfaction with regard to safety and durability, health and comfort, convenience of life, and livable environment compared to those aged 18–30. Young people may prioritize quality of life, leading to higher standards for residential buildings. In contrast, middle-aged individuals tend to prioritize functional demand for green buildings and may not prioritize quality and functionality as much as younger individuals. Compared to residential buildings, public buildings provide greater satisfaction in terms of health and comfort for those aged 18–30 and 31–50, compared to those over 51 years old. Additionally, satisfaction levels are higher for those aged 18–30 compared to those over 51 years old, and for those aged 31–50 compared to those under 18 and over 51 years old. Public buildings primarily serve middle-aged and young people, who value convenience, health, and comfort. The current public buildings have successfully prioritized these aspects.
In addition to the four categories of safety and durability, health and comfort, convenience of life, and livable environment, the questionnaire adds specific evaluations of these four categories in terms of their greater impact on life, better functional realization, and need to be improved.
Table 12 displays the distribution of subjective feelings across the various categories. Based on the results, 52.3% of residents believe that health and comfort have a greater impact on their lives, while 39.1% believe that their current living environment provides adequate health and comfort. Safe and durable and convenient life were ranked second, while environmental habitability was ranked the lowest. Similarly, the demand for health and comfort is significantly higher than the other three factors in terms of function. The proportion of health and comfort in public buildings’ impact on life is 48.5%, the proportion of function realization is 39.2%, and the proportion of improvement is 42.3%, all of which exceed the other four factors. This indicates that public buildings play a crucial role in people’s lives. Meanwhile, with regard to convenient life, 32.9% of respondents believe that the function is superior.
A chi-square test was conducted on the data from the aforementioned questions to analyze the correlation between different needs, gender, and age. The results of the calculations are presented in
Table 13.
Residential and public buildings exhibit significant differences in the importance of four dimensions of life impact based on gender. Men place a higher demand for safety and durability on both types of buildings compared to women. This suggests that men prioritize practicality and pay more attention to the safety and durability of buildings.
In residential buildings, there is no obvious difference in the demand and satisfaction of different age groups for the realization of green building functions. There are significant differences in the functional realization of all dimensions of public buildings by age. People between 31 and 50 years old have the lowest perception of the realization of safety and durable functions, while people in this age group feel better in terms of health and comfort. People in the age group of 31–50 have more frequent contact with public buildings in daily life. Compared with the safety of public buildings, they have more obvious feelings about the use of buildings. Whether there are problems in the safety and durability of public buildings is the next step to discuss.
3.2.2. Level 2 Index Satisfaction
The following table (
Table 14) shows the average satisfaction scores of residential buildings and public buildings in the survey.
To visually display the distribution of satisfaction levels in green building use, a bar chart has been chosen to represent the frequency distribution across different satisfaction intervals. The bar chart allows for a quick comparison of frequencies between intervals, identifying which intervals have higher or lower satisfaction levels. This analysis examines the distribution of satisfaction by analyzing the satisfaction intervals and the frequency of residential and public buildings within these intervals.
In
Figure 4, the first picture shows the satisfaction level of residential buildings, and the second picture shows the satisfaction level of public buildings. The satisfaction distribution of residential buildings is concentrated in the range of 3.65–3.8, with the highest frequency being 3.65–3.7 and 3.75–3.8. In contrast, the satisfaction distribution of public buildings in the 3.8–3.85 interval is significantly higher than that in other intervals, indicating that users in this interval are more satisfied.
In
Figure 4, subfigure a represents the distribution of satisfaction with residential buildings, and subfigure b represents the distribution of satisfaction with public buildings. When comparing the satisfaction distribution of residential and public buildings, it is found that residential buildings have six indicators of low satisfaction, with an average satisfaction score lower than 3.7, while public buildings only have two. Among the indicators of high satisfaction above 3.9, residential buildings have six indicators and public buildings have four indicators. The user satisfaction of residential buildings is evenly distributed between 3.65 and 3.8, with scattered satisfaction scores. However, the user satisfaction of public buildings shows a clear central trend in the range of 3.8–3.85. Public buildings, as a whole, have a slightly higher satisfaction rating, indicating that most users tend to rate them highly. However, there is a need to enhance the architectural design of residential buildings and improve indicators with low satisfaction. This can be achieved by increasing the use of sound-absorbing materials to strengthen indoor sound insulation and enhancing the overall satisfaction of green buildings.
3.3. Weight Analysis of Evaluation Index Based on Personnel Satisfaction
The score of the questionnaire was scored in turn, the number of people was proportional, and the quantified value was converted according to the ki value. See
Table 15 for an example of constructing a judgment matrix.
The consistency ratio of satisfaction of residential buildings is 0.0116; the weight of “residential building satisfaction” is 1.0000; λmax is 4.0310. The satisfaction consistency ratio 0.0116 < 0.1, and the judgment matrix satisfies the consistency test.
Similarly, the two-level index judgment matrix was constructed, and a consistency test was carried out. The weight results of each classification of residential buildings are shown in
Table 14.
The calculation formula of standard weight
Pi is as follows:
where
Pn is the single question score;
PN is the sum of question scores (the standard item score is the corresponding item score in ASGB 2019).
An evaluation function
P is introduced as the weight ratio index.
where
Pt is the Level 2 index weight.
The evaluation level P can be set as four evaluation levels: poor function realization (P ≤ 50%), functional implementation is mediocre (50% < P ≤ 80%), the function is better (80% < P ≤ 150%), the function is very good (P < 150%). The calculation results are shown in the table below.
3.3.1. Residential Building
Figure 5 shows the weight of residential first-level indicators. In the subjective evaluation of owners, the subjective satisfaction of health and comfort is lower than the weight value calculated by the comprehensive calculation of each item, indicating that when the users of the building users use the building, the advantages of the building in health and comfort are not obvious, and the evaluation of the building in this aspect cannot be intuitively given. However, the subjective weight of safety durability is higher than the calculated weight, which shows that the current building performs relatively well in the stage from handover to operation and management.
The proportion of the weight function of the secondary index is shown in
Figure 6. The figure above presents the
p-value for each factor. Based on the weight data, it is evident that personnel involved in residential construction are highly satisfied with indoor air quality, water safety, indoor natural ventilation comfort, convenience of public transportation, and open spaces such as cities and public venues within walking distance. These factors are represented as ‘function realization is very good’. However, the level of satisfaction with indoor wall cracking, building exterior paint discoloration, water seepage, outdoor water accumulation, green comfort, outdoor smoking area provision, and noise and light pollution control is low, indicating poor functional realization. The satisfaction of outdoor ground non-slip surfaces, indoor sound insulation, lighting, outdoor fitness activity area setting, and surrounding public service facilities falls under the category of ‘function realization is general’.
In terms of residential buildings, less than 50% of the standard of 85.3% of environmental livability has been achieved, indicating poor implementation in this field. In addition, 66.7% of the indicators exceeded 150% for health and comfort, which was the best performance among the four evaluation indicators. Convenience of life followed closely behind. Overall, it can be concluded that the evaluation system meets the objective requirements.
3.3.2. Public Building
The two-level index judgment matrix was constructed, and a consistency test was carried out. The weight results of each classification index of public buildings are shown in
Table 16.
The
Figure 7 indicates that the subjective satisfaction of health and comfort is lower than the weight value calculated by the comprehensive calculation of each item. This suggests that people’s intuitive feeling of health and comfort is lower than the objective situation in the use of public buildings. It is evident that the current function of public buildings in health and comfort is relatively complete, exceeding the users’ expectations. At the same time, the importance of safety, durability, and convenience in daily life outweighs that of mere calculation. It is evident that current public buildings have some shortcomings in these areas, which are noticeable and affect the users’ experience.
Figure 8 shows the proportion of the implementation of the weight function of public secondary indicators. The figure shows the
p-value for each factor. Based on the weight data, it is evident that public construction personnel are highly satisfied with indoor air quality, water safety, natural ventilation comfort, and the convenience of public transportation, with a ‘good function realization’ performance. However, they are less satisfied with outdoor water, green comfort, outdoor smoking area setting, and noise control, which fall under ‘poor function realization’. Many other aspects of satisfaction fall somewhere in between.
Regarding safety durability and environmental livability of public buildings, 66.7% and 71.4% of the functional implementation standards are less than 50%, indicating poor implementation that needs improvement. As for health and comfort, 50% of the functional realization standards exceed 150%, indicating excellent performance. Meanwhile, in terms of living convenience, 33.3% of the indicators are better, and another 33.3% are rated as very good. This places it second only to health and comfort, indicating an overall positive effect of this factor.
4. Discussion
This study shows progress in the field of green building in China, particularly in terms of health and comfort, which are highly rated by building users. However, we have also observed that green buildings have some imperfections in certain functions, mainly in the areas of environmental livability and safety and durability, and user satisfaction is low in these two aspects. The future development of green buildings requires a better balance between various performance indicators. The study identified deficiencies in current green building technologies, including outdoor drainage after rainfall, the comfort of greenery around buildings, the layout of outdoor smoking areas, and outdoor noise control. Residential and public buildings exhibit a consistent trend in these key indicators, as evidenced by the weight of the indicators. It is apparent that certain indicators with low satisfaction require improvement.
Compared to the quantitative indicators in ASGB2019, this study offers a new perspective for understanding the needs of building users. It emphasizes that future green building designs should address the practical concerns of users more effectively. Hubei Province is located in the central region of China, making it both geographically representative and suitable for extending research results to a national scale. Additionally, this study presents a novel evaluation method that compares satisfaction weight with index weight in ASGB2019 to analyze the pros and cons of green buildings in a particular region. This provides a robust framework for differentiated green building development in the region. As a whole, this study enhances our comprehension of the user experience of green buildings and offers valuable insights to drive the continuous improvement of green buildings in China. This will help to further optimize the advantages of green buildings and address their shortcomings.
This research focuses on the content of building comfort in the current ASGB 2019 in China. However, there are still some limitations in this study, which did not investigate environmental performance, energy conservation, and carbon footprint. Therefore, it can be improved with follow-up research of this kind.