CPO Technology Maturity Model

CPO Technology Maturity Model

Deploying EV Charging Infrastructure, whether it be a municipality or a Charge Point Operator (CPO) faces the challenge of creating processes that allow for the accuracy and scalability of the network. Whilst accuracy is improving, scalability remains a problem with alarming statistics such as a recent European Automobile Manufacturers’ Association Report revealing that the EU needs 8 times more charge points per year if they plan to meet their environmental goals by 2030. A significant factor that I see impacting the CPO’s ability to scale is their approach to site selection. There are multiple paths CPO’s can take but they all seem to lead to the last evolutionary step - turning to experts both in the space and in Data Science.

The site selection approaches

Gut feel: Smaller operators starting in a local area often rely on intuition or existing local knowledge. They rely on this knowledge to find spots with high traffic, parking spots near amenities, or locations frequented by existing or potential EV drivers. While this approach can sometimes yield successful outcomes, it overall lacks both accuracy and the ability to scale. It is based on subjective experience instead of data and can overlook factors such as population density and traffic patterns, therefore often resulting in inaccuracy. In terms of scalability, it is impractical to use this approach as the network grows, especially once it crosses into areas unknown to the operators.?

Tabs and spreadsheets: A slightly more systemized approach might include Excel, Google Maps, and 20+ browser tabs. This means finding and cross-referencing data, compiling it in a spreadsheet, and using tools such as Excel to perform analyses and pinpoint sites. This approach is time-consuming and overwhelming, while the results are not significantly more optimized. The amount of data makes it easy to overlook key factors and the manual aspect makes it difficult to apply the process to select a large number of charge points.?

BI or GIS tools: Another approach uses Business Intelligence (BI) or Geographic Information Systems (GIS) tools. This is a step up for Municipalities and CPOs as they can visualize and analyze spatial data,? employing different layers and producing insights invisible to spreadsheets. With the right configuration and data this can lead to a far more accurate and scalable network. However, these tools can be complex and require a steep learning curve, especially for users who are not familiar with geospatial analysis or data analytics. This complexity can make it challenging for operators to fully leverage the capabilities of these tools without adequate expertise, as it is a challenge to extract the relevant information and translate it into useful insights. The approach is also heavily dependent on data, which needs to be of an appropriate level of quality, integrated, updated, and maintained. We have seen very large companies using data sets that are often incomplete and often several years old! Conversely, we have seen people using ‘straight-line projections’ for EV adoption that really have little value from a Data Science perspective.??

Build your own: The third choice is to build their own models, upgrading all the existing possibilities by integrating other tools and dedicating a data science and project team to the cause. This approach is high in accuracy and ability to scale and is appropriate for those who have over 18 months of time to build the model and start using it to produce results and endless resources to fund the building and maintenance of such a tool. Four years ago when we first started doing this there were very few commercial options available for site assessment or network planning but now there are a handful of good Data Science companies providing Commercial off the Shelf options. IN short this approach takes time (lost opportunity cost) and can be VERY expensive, where the final cost is unknown at the point of commissioning of the project!

Dodona eMobility: Alternatively, charge point operators can leverage existing platforms specialized in site selection. There is no need to compile overwhelming sets of data, to have data analysis expertise or a project management team to keep your model running. The Dodona eMobility EV Charging Optimization platform is an existing solution that aggregates and analyzes vast amounts of data, providing CPOs with comprehensive insights and prioritized lists of potential locations. This approach offers a quicker and more cost-effective solution as it eliminates the need for in-house data analysis and model development while providing the most accurate and scalable process out of all potential approaches.?

Site Assessment & Network Planning Maturity Model

The typical CPO tech evolution

There are typically 3 stages in a CPO tech evolution:?

  1. Startup: In the early stages of their journey, organisations often rely on gut feeling and intuition for site selection. With limited resources and experience, they may initially overlook the need for systematic processes and data-driven approaches. Each decision is made independently, often by different people, lacking consistency and standardized procedures across the business. However, as the business grows, they begin to realize the limitations of relying solely on intuition and recognize the need for more structured processes. This might lead them to dabble in the Tabs and spreadsheets approach as they try to gain more clarity.?
  2. Scaling: As they mature and experience more accuracy in their site selection, they encounter the need to scale. This might lead them to explore BI or GIS solutions. BI tools provide CPOs with advanced analytics capabilities while GIS tools offer spatial analysis functionalities. This marks a transition to a data-driven approach.
  3. Turn to experts: Despite the strengths of the previous approach organisations evolve to reach a point where BI and GIS tools no longer meet their needs. They may seek to develop custom models but soon realize the challenges associated with building and maintaining their own solutions, including the need for specialized data science expertise and ongoing data management, and the cost of development and maintenance. This realization leads organisations to reconsider their approach and explore alternative solutions. They recognize the value of working with experts who already have existing platforms and domain knowledge in the field of electric vehicle infrastructure. By collaborating with established platform providers, they can leverage their expertise, access advanced technologies, and benefit from continuous updates and improvements without the burden of developing and managing their own solutions.

As an EV Charging Optimisation platform provider, we help organisations skip these expensive and painful evolutionary steps and make strategic data-driven site selection decisions from the very beginning, maximizing network efficiency and minimising risk.?

About Dodona

Dodona Analytics is a leading EV Charging Optimization platform. We work with some of the most ambitious and successful Charge Point Operators across Europe and the US to help deploy tens of thousands of chargers every year. As Data Scientists and experts in Future Mobility, we are changing the way we move people, goods, and services, and we are passionate about building a better future.??

Nici Jupp

Accelerate hiring performance for Scale-up Founders/CEOs to Consistently Hire A-Team Players at speed | Global Speaker | Worked with >200 scale-ups (also some pretty well known brands too!)

6 个月

Data and eduction will be key to the expansion of network which ultimately leads to the uptake in the use of EV's. I still have conversations with people nervous about going electric because of perceived charging challenges. We're heading to Spain in our EV and am going to post about the journey. Thanks for sharing the article Chris Chamberlain

Is there a single money making EV charger operator in the world ?

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