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Lun - Ven, 9:00 - 18:00 h (EST)
Lun - Ven, 9:00 - 18:00 h (EST)
Lun - Ven, 9:00 - 17:00 h (SGT)
Lun - Ven, 10:00 - 18:00 h (JST)
Lun - Ven, 9:00 - 18:00 h (GMT)
Lun - Ven, 9:00 - 18:00 h (EST)
Key regions: Germany, Europe, India, Indonesia, United States
The Moped-sharing market in Netherlands has been experiencing significant growth in recent years. This can be attributed to several factors, including customer preferences, trends in the market, local special circumstances, and underlying macroeconomic factors.
Customer preferences: One of the main reasons for the growth of the Moped-sharing market in Netherlands is the changing preferences of customers. With increasing urbanization and traffic congestion, people are looking for alternative modes of transportation that are convenient, cost-effective, and eco-friendly. Moped-sharing services provide a solution to these needs, allowing customers to easily navigate through busy city streets and reach their destinations quickly.
Trends in the market: The Moped-sharing market in Netherlands is also being driven by several trends. Firstly, there is a growing focus on sustainability and reducing carbon emissions. Mopeds are seen as a more environmentally friendly option compared to cars or motorcycles, as they produce fewer emissions and consume less fuel. Additionally, the rise of smartphone technology has made it easier for customers to access and use Moped-sharing services. Mobile apps allow users to locate and unlock available mopeds, making the process seamless and convenient.
Local special circumstances: Netherlands has a unique set of circumstances that make it particularly conducive to the growth of the Moped-sharing market. The country has a well-developed infrastructure and a high population density, which makes it ideal for short-distance travel. The flat terrain and well-maintained roads also make it easy for mopeds to navigate through the cities. Furthermore, the Netherlands has a strong cycling culture, with many people already comfortable with using two-wheeled vehicles for transportation. This familiarity with two-wheelers has likely contributed to the acceptance and adoption of Moped-sharing services.
Underlying macroeconomic factors: Several macroeconomic factors have contributed to the growth of the Moped-sharing market in Netherlands. Firstly, the country has a strong economy and high disposable income levels, which means that people have the financial means to use Moped-sharing services. Additionally, the government has implemented policies to promote sustainable transportation options, such as tax incentives for electric vehicles. This has created a favorable regulatory environment for Moped-sharing companies, encouraging their growth and expansion. In conclusion, the Moped-sharing market in Netherlands is experiencing significant growth due to changing customer preferences, market trends, local special circumstances, and underlying macroeconomic factors. As people seek convenient and eco-friendly transportation options, Moped-sharing services provide a viable solution. With the right infrastructure and supportive government policies, the market is expected to continue its upward trajectory in the coming years.
Data coverage:
The data encompasses B2C enterprises. Figures are based on bookings and revenues of moped-sharing services.Modeling approach:
Market sizes are determined through a bottom-up approach, building on a specific rationale for each market. As a basis for evaluating markets, we use financial reports, third-party studies and reports, federal statistical offices, industry associations, and price data. To estimate the number of users and bookings, we furthermore use data from the Statista Consumer Insigths Global survey. In addition, we use relevant key market indicators and data from country-specific associations, such as demographic data, GDP, consumer spending, internet penetration, and device usage. This data helps us estimate the market size for each country individually.Forecasts:
In our forecasts, we apply diverse forecasting techniques. The selection of forecasting techniques is based on the behavior of the relevant market. For example, ARIMA, which allows time series forecasts, accounting for stationarity of data and enabling short-term estimates. Additionally, simple linear regression, Holt-Winters forecast, the S-curve function and exponential trend smoothing methods are applied.Additional notes:
The data is modeled using current exchange rates. The market is updated twice a year in case market dynamics change.Lun - Ven, 9:00 - 18:00 h (EST)
Lun - Ven, 9:00 - 18:00 h (EST)
Lun - Ven, 9:00 - 17:00 h (SGT)
Lun - Ven, 10:00 - 18:00 h (JST)
Lun - Ven, 9:00 - 18:00 h (GMT)
Lun - Ven, 9:00 - 18:00 h (EST)