1. Introduction
Urban society’s knowledge of, understanding of, and relationship to modern agriculture is highly questioned by various agricultural stakeholders in Germany. In agricultural media, these issues are increasingly being taken up and discussed with politicians and the agricultural and food industry with regard to how to deal with the urban–rural discrepancy. Frequently, urbanization and loss of an urban population’s connection to agricultural production are given as the main reasons for the perceived differences. Due to assumed alienation from the agricultural sector of people living in urban areas, it seems difficult to reconcile the benefits and legitimization of modern agricultural production with related social and environmental issues (e.g., animal welfare, insect mortality).
Nowadays, more than three quarters of the German population live in urban settlement areas [
1]. Whereas at the beginning of the last century almost 40% of the population practiced agriculture themselves, less than 2% are currently employed in agriculture and related sectors [
2]. Nevertheless, people are also consumers who are becoming increasingly responsible and sophisticated when it comes to transparent and sustainable food production [
3]. Easier and faster access to information and higher media attention accelerate this process. The current literature does not clearly indicate whether attitudes toward and perceptions of contemporary agriculture differ between urban and rural populations [
4,
5]. However, there is evidence that the physical distance of urban dwellers from agriculture affects their knowledge on agriculture [
6]. Many stakeholders and decision makers in the agricultural sector attribute agriculture’s image problems to the disconnection of society from modern agriculture. However, is urbanization really the main reason for the lack of societal acceptance?
2. Materials and Methods
To explore this question, we draw on data from a 2018 online consumer survey querying societal acceptance of digital farming technologies. In addition to partially pre-quoted information on the sociodemographics of 2012 respondents, several items were asked about general attitudes toward agriculture, self-assessed knowledge about agricultural production processes and equipment, and trust in farmers’ responsible acting. Furthermore, we investigated respondents’ attitudes toward digital farming technologies (DFT) using Likert scales. Additionally, the survey participants should give spontaneous short associations with four shown pictures of digital technologies in practice (milking robot, cow-feeding robot, autonomous tractor sowing, swarm robots on the field). The web sources for the images used can be found in the
supplementary material of this article. More details on the surveyed items and pictures can be found in a recent publication by Pfeiffer et al. [
7].
For the purpose of this analysis, the population densities of the individual postal code areas were classed on the basis of the official divisions between urban and rural (150,000 inhabitants per km2). We can thus compare a subsample of 560 respondents who live in larger cities and highly populated areas with a subsample of 337 respondents who live in towns with fewer than 100,000 inhabitants and a low regional population density. Both subsamples were tested for differences in sociodemographic characteristics and in deviation of median responses concerning the queried Likert scales and picture association ratings. Two binominal logistic regression models were designed to indicate the probability of group classification by predictors indicating (a) the general societal perspective on agriculture and (b) positions on the use of digital farming technologies (DFT).
3. Results
Members of the urban subsample have a significantly weaker relation to agriculture and show a slightly higher level of education. Differences can be measured in specific statements regarding self-assessed knowledge of current agricultural methods and trust in responsible practice of farmers.
Figure 1 represents the mean values of the two subsamples’ responses to each surveyed rating scale. The 5-point scales range from “I fully agree” or “very high” to “I fully disagree” or “very low”. Unsurprisingly, regarding self-assessed knowledge, both subsamples are very restrained when it comes to current practice and technology use. In this respect, urban dwellers are even more cautious than the rural population, as shown by the statistical comparison. There are almost no differences between urban and rural residents on statements about general attitudes toward agriculture. Both groups agree with statements on animal welfare, environmental protection, and the life quality of farmers. For the two items concerning trust in farmers’ practice, the mean values are more in the middle of the scale range, with the rural population extending more trust to farmers.
A further scale measured different attitudes toward the benefits of digital farming technologies. Differences can be observed between the items but not between the subsamples. Both subsamples agree that the technologies primarily support the farming family and are undecided as to whether new technologies lead to the alienation of farmers from their land or animals. Finally, the mean ratings of the maximum three associations per shown picture were compared on a scale of triple positive to triple negative. Robotics in the context of dairy production was viewed more negatively than robotics in the context of arable farming. In particular, the image of a cow surrounded by a milking robot led to frequent negative associations. The city dwellers are more positive concerning field robotics, while rural residents are less critical when they are confronted with pictures of autonomous animal husbandry technologies.
Two logistic regression models were designed to indicate the probability of classification to the two groups and the explained variance of the indicating predictors. Regarding the first model (social perspective on agriculture), it is found that differences through items of self-assessed knowledge on modern agriculture, attitudes toward agriculture, and trust in farmers offer no explanatory contribution to the classification of the respondents to one of the two groups. For the second model (use of DFT), the variance explained by covariates indicating ‘knowledge of agricultural machines’, several ‘attitudes towards DFT’ and ‘spontaneous associations’ of shown pictures of selected technologies are also low (
Table 1). Only better knowledge of machines and equipment by the rural population and the respective direction of associations (positive, negative) with pictures of a large autonomous tractor and a feeding robot, respectively, provide statistically significant contribution to the classification. The odds indicate the corresponding probability of classification when changing these parameters by one scale step.
4. Discussion and Conclusions
The two clearly distinguished subsamples of rural and urban residents reveal differences in the level of education and physical contact with agriculture. In addition, lower rates of self-assessed knowledge and trust in modern agriculture can be shown among city dwellers. City dwellers were also significantly more critical of the images concerning animal husbandry than the comparison group. The two logistic models regarding general societal perspective on agriculture and positions on the use of digital farming technologies, however, show that most predictors provide no explanatory contribution to the classification into the two groups. In both models, the classification performance of the factors used is very low. On the basis of the two subsamples, it can be concluded that there is no generalized tendency that the urban population is more opposed to the development of modern agriculture based on different attitudes and perceptions in contrast to their rural counterparts. Blanket pointing at the urban population to explain the agricultural sector’s current societal problems is thus misleading, particularly since the ongoing urbanization in Germany creates a growing fraction of society that, on average, holds higher income, spends more on food, and demands high-quality food products. Therefore, agricultural communication strategies should address the entire population to explain state-of-the-art agriculture and to communicate modern food production and the various services (e.g., ecosystem services) provided by the agricultural sector.
Author Contributions
Conceptualization, A.G. and M.G.; formal analysis, A.G.; investigation, A.G.; data curation and validation, A.G.; writing—original draft preparation, A.G.; writing—review and editing, A.G. and M.G.; visualization, A.G.; supervision, M.G.; funding acquisition, M.G. All authors have read and agreed to the published version of the manuscript.
Funding
Research was funded by the Bavarian State Ministry for Food Agriculture and Forestry (grant number D/17/01).
Institutional Review Board Statement
The study was conducted in accordance with the General Data Protection Regulation (EU) for anonymous surveys. No personal data were processed.
Informed Consent Statement
All survey participants declared their explicit consent.
Data Availability Statement
The data presented in this study are available on request from the corresponding author.
Acknowledgments
The authors acknowledge Sebastian Schleicher for his student assistance in survey design and data collection. Thanks to Florian Klein for the assistance with data processing.
Conflicts of Interest
The authors declare no conflict of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript; or in the decision to publish the results.
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